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28 pages, 7334 KB  
Article
I-GhostNetV3: A Lightweight Deep Learning Framework for Vision-Sensor-Based Rice Leaf Disease Detection in Smart Agriculture
by Puyu Zhang, Rui Li, Yuxuan Liu, Guoxi Sun and Chenglin Wen
Sensors 2026, 26(3), 1025; https://doi.org/10.3390/s26031025 - 4 Feb 2026
Abstract
Accurate and timely diagnosis of rice leaf diseases is crucial for smart agriculture leveraging vision sensors. However, existing lightweight convolutional neural networks (CNNs) often struggle in complex field environments, where small lesions, cluttered backgrounds, and varying illumination complicate recognition. This paper presents I-GhostNetV3, [...] Read more.
Accurate and timely diagnosis of rice leaf diseases is crucial for smart agriculture leveraging vision sensors. However, existing lightweight convolutional neural networks (CNNs) often struggle in complex field environments, where small lesions, cluttered backgrounds, and varying illumination complicate recognition. This paper presents I-GhostNetV3, an incrementally improved GhostNetV3-based network for RGB rice leaf disease recognition. I-GhostNetV3 introduces two modular enhancements with controlled overhead: (1) Adaptive Parallel Attention (APA), which integrates edge-guided spatial and channel cues and is selectively inserted to enhance lesion-related representations (at the cost of additional computation), and (2) Fusion Coordinate-Channel Attention (FCCA), a near-neutral SE replacement that enables efficient spatial–channel feature fusion to suppress background interference. Experiments on the Rice Leaf Bacterial and Fungal Disease (RLBF) dataset show that I-GhostNetV3 achieves 90.02% Top-1 accuracy with 1.831 million parameters and 248.694 million FLOPs, outperforming MobileNetV2 and EfficientNet-B0 under our experimental setup while remaining compact relative to the original GhostNetV3. In addition, evaluation on PlantVillage-Corn serves as a supplementary transfer sanity check; further validation on independent real-field target domains and on-device profiling will be explored in future work. These results indicate that I-GhostNetV3 is a promising efficient backbone for future edge deployment in precision agriculture. Full article
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16 pages, 382 KB  
Article
Seed Germination and Seedling Production of Physalis peruviana Using Different Substrates and Growing Containers
by Elis Marina de Freitas, Fernando Augusto da Silveira, Laércio Junio da Silva and Fernando França da Cunha
Crops 2026, 6(1), 17; https://doi.org/10.3390/crops6010017 - 4 Feb 2026
Abstract
The cultivation of Physalis peruviana has emerged as a promising alternative for small- and medium-sized producers due to its high added value and low production cost. However, information on the cultivation of this vegetable crop under Brazilian edaphoclimatic conditions is still scarce. Seedling [...] Read more.
The cultivation of Physalis peruviana has emerged as a promising alternative for small- and medium-sized producers due to its high added value and low production cost. However, information on the cultivation of this vegetable crop under Brazilian edaphoclimatic conditions is still scarce. Seedling production is one of the most critical stages for crop development, as this species does not establish well from seeds under field conditions. Therefore, this study aimed to evaluate seed germination and seedling growth of P. peruviana under different container volumes and substrate compositions. The experiment was carried out from February to March 2020 in a screened greenhouse environment, using a completely randomized factorial design. The treatments consisted of different container volumes and substrate compositions, including commercial containers of varying sizes and soil-based substrates formulated with mineral components and organic manures. Four replications were used, each consisting of seven plants. Seed emergence was favored by substrates containing well-composted cattle manure, whereas smaller container volumes reduced the emergence of P. peruviana. The greatest seedling growth, including higher stem base diameter, number of leaves per plant, leaf area, and shoot and root dry mass, was obtained in larger-volume containers filled with soil-based substrates enriched with well-composted cattle manure. Therefore, for the production of high-quality P. peruviana seedlings, the use of 400 cm3 polyethylene containers filled with a mixture of soil, sand, commercial substrate, and well-composted cattle manure in a 1:1:1:2 ratio is recommended. Full article
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37 pages, 9151 KB  
Review
Plant-Derived Strategies for Glycemic Management in Diabetes: A Narrative Review
by Viktor Husak, Volodymyr Shvadchak, Olena Bobrova, Milos Faltus, Yaroslava Hryhoriv, Uliana Karbivska, Myroslava Vatashchuk, Viktoria Hurza and Vitaliy Mel’nyk
Diabetology 2026, 7(2), 29; https://doi.org/10.3390/diabetology7020029 - 2 Feb 2026
Viewed by 84
Abstract
Diabetes mellitus remains a major global health burden, and many patients do not achieve durable glycemic control despite modern pharmacotherapy. This narrative review synthesizes evidence on plant-derived strategies that may complement standard care, focusing on two clinically aligned domains: glucose-lowering medicinal plants and [...] Read more.
Diabetes mellitus remains a major global health burden, and many patients do not achieve durable glycemic control despite modern pharmacotherapy. This narrative review synthesizes evidence on plant-derived strategies that may complement standard care, focusing on two clinically aligned domains: glucose-lowering medicinal plants and plant-based sugar substitutes that reduce dietary glycemic load. We summarize key mechanistic pathways, including inhibition of α-amylase/α-glucosidase, reduced intestinal glucose entry and absorption kinetics, glucose-dependent insulinotropic effects, improved insulin signaling, suppression of hepatic gluconeogenesis, and microbiota-linked effects. We critically appraise human evidence for selected botanicals (cinnamon, fenugreek, mulberry, gymnema, gynura, rosehip, and Jerusalem artichoke) and plant sweeteners (stevia and monk fruit). Overall, clinical effects are modest and heterogeneous; the most reproducible signals are observed for mulberry leaf in blunting postprandial glucose excursions, and for cinnamon, fenugreek, and gymnema, where meta-analyses suggest modest improvements in glycemic markers. Stevia and monk fruit are best supported as glycemically neutral sucrose substitutes, while inulin-type fructans show small-to-moderate benefits with sustained intake, limited by gastrointestinal tolerability at higher doses. Key gaps include a shortage of long-term randomized trials using standardized preparations and durable endpoints such as glycated hemoglobin. Plant-derived interventions are therefore best positioned as adjuncts within individualized, evidence-based glycemic management. Full article
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17 pages, 1993 KB  
Article
Spatial Vertical Distribution of the Leaf Nitrogen Concentration in Young Cephalotaxus hainanensis
by Mengmeng Shi, Danni He, Ying Yuan, Zhulin Chen, Shudan Chen, Xingjing Chen, Tian Wang and Xuefeng Wang
Forests 2026, 17(2), 192; https://doi.org/10.3390/f17020192 - 1 Feb 2026
Viewed by 127
Abstract
Cephalotaxus hainanensis, a valuable medicinal and endangered conifer, requires scientific conservation and precision management to ensure the sustainable utilization of its genetic and ecological resources. Nitrogen (N) is a key nutrient that regulates plant growth and metabolism; rapid and accurate nitrogen diagnosis [...] Read more.
Cephalotaxus hainanensis, a valuable medicinal and endangered conifer, requires scientific conservation and precision management to ensure the sustainable utilization of its genetic and ecological resources. Nitrogen (N) is a key nutrient that regulates plant growth and metabolism; rapid and accurate nitrogen diagnosis is vital for optimizing fertilization, reducing nutrient losses, and promoting healthy plant development. This study employed a combined approach integrating stepwise regression, correlation analysis, and Least Absolute Shrinkage and Selection Operator (LASSO) regression to identify leaf color features strongly correlated with leaf nitrogen content (LNC). A support vector regression (SVR) model, suitable for small-sample datasets, was then employed to accurately estimate LNC across canopy layers. Nine color variables were found to be highly associated with LNC, among which the Green Minus Blue index (GMB) consistently appeared across all correlation methods, demonstrating strong robustness and generality. Color features effectively reflected LNC variations among nitrogen treatments—especially between N1 and N4—and across canopy layers, with the most pronounced contrasts observed between upper and lower leaves. The Spearman-based SVR model revealed that the middle canopy maintained the highest and most stable LNC. However, the lower leaves were most sensitive to nitrogen deficiency, while the upper leaves were more sensitive to nitrogen excess. Comprehensive analysis identified N2 as the optimal nitrogen treatment, representing a balanced nutrient state. Overall, this study confirms the reliability of color features for LNC estimation and highlights the importance of vertical canopy LNC distribution in nitrogen diagnostics, providing a theoretical and methodological foundation for color-based nitrogen diagnosis and precision nutrient management in evergreen conifers. Full article
(This article belongs to the Section Forest Ecology and Management)
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19 pages, 1947 KB  
Article
ADC-YOLO: Adaptive Perceptual Dynamic Convolution-Based Accurate Detection of Rice in UAV Images
by Baoyu Zhu, Qunbo Lv, Yangyang Liu, Haoran Cao and Zheng Tan
Remote Sens. 2026, 18(3), 446; https://doi.org/10.3390/rs18030446 - 1 Feb 2026
Viewed by 70
Abstract
High-precision detection of rice targets in precision agriculture is crucial for yield assessment and field management. However, existing models still face challenges, such as high rates of missed detections and insufficient localization accuracy, particularly when dealing with small targets and dynamic changes in [...] Read more.
High-precision detection of rice targets in precision agriculture is crucial for yield assessment and field management. However, existing models still face challenges, such as high rates of missed detections and insufficient localization accuracy, particularly when dealing with small targets and dynamic changes in scale and morphology. This paper proposes an accurate rice detection model for UAV images based on Adaptive Aware Dynamic Convolution, named Adaptive Dynamic Convolution YOLO (ADC-YOLO), and designs the Adaptive Aware Dynamic Convolution Block (ADCB). The ADCB employs a “Morphological Parameterization Subnetwork” to learn pixel-specific kernel shapes and a “Spatial Modulation Subnetwork” to precisely adjust sampling offsets and weights—realizing for the first time the adaptive dynamic evolution of convolution kernel morphology with variations in rice scale. Furthermore, ADCB is embedded into the interaction nodes of the YOLO backbone and neck; combined with depthwise separable convolution in the neck, it synergistically enhances multi-scale feature extraction from rice images. Experiments on public datasets show that ADC-YOLO comprehensively outperforms state-of-the-art algorithms in terms of AP50 and AP75 metrics and maintains stable high performance in scenarios such as small targets at the seedling stage and leaf overlap. This work provides robust technical support for intelligent rice field monitoring and advances the practical application of computer vision in precision agriculture. Full article
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15 pages, 1319 KB  
Article
A Machine Learning-Validated Comparison of LAI Estimation Methods for Urban–Agricultural Vegetation Using Multi-Temporal Sentinel-2 Imagery in Tashkent, Uzbekistan
by Bunyod Mamadaliev, Nikola Kranjčić, Sarvar Khamidjonov and Nozimjon Teshaev
Land 2026, 15(2), 232; https://doi.org/10.3390/land15020232 - 29 Jan 2026
Viewed by 145
Abstract
Accurate estimation of Leaf Area Index (LAI) is essential for monitoring vegetation structure and ecosystem services in urban and peri-urban environments, particularly in small, heterogeneous patches typical of semi-arid cities. This study presents a comparative assessment of four empirical LAI estimation methods—NDVI-based, NDVI-advanced, [...] Read more.
Accurate estimation of Leaf Area Index (LAI) is essential for monitoring vegetation structure and ecosystem services in urban and peri-urban environments, particularly in small, heterogeneous patches typical of semi-arid cities. This study presents a comparative assessment of four empirical LAI estimation methods—NDVI-based, NDVI-advanced, SAVI-based, and EVI-based methods—applied to atmospherically corrected Sentinel-2 Level-2A imagery (10 m spatial resolution) over a 0.045 km2 urban–agricultural polygon in the Tashkent region, Uzbekistan. Multi-temporal observations acquired during the 2023 growing season (June–August) were used to examine intra-seasonal vegetation dynamics. In the absence of field-measured LAI, a Random Forest regression model was implemented as an inter-method consistency analysis to assess agreement among index-derived LAI estimates rather than to perform external validation. Statistical comparisons revealed highly systematic and practically significant differences between methods, with the EVI-based approach producing the highest and most dynamically responsive LAI values (mean LAI = 1.453) and demonstrating greater robustness to soil background and atmospheric effects. Mean LAI increased by 66.7% from June to August, reflecting irrigation-driven crop phenology in the semi-arid study area. While the results indicate that EVI provides the most reliable relative LAI estimates for small urban–agricultural patches, the absence of ground-truth data and the influence of mixed pixels at 10 m resolution remain key limitations. This study offers a transferable methodological framework for comparative LAI assessment in data-scarce urban environments and provides a basis for future integration with field measurements, higher-resolution imagery, and LiDAR-based 3D vegetation models. Full article
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24 pages, 8057 KB  
Article
Retrieval of Mangrove Leaf Area Index Using Multispectral Vegetation Indices and Machine Learning Regression Algorithms
by Liangchao Deng, Xuyang Chen, Li Xu, Bolin Fu, Yongze Xing, Shuo Yu, Tengfang Deng, Yuzhou Huang and Qianguang Liu
Forests 2026, 17(2), 180; https://doi.org/10.3390/f17020180 - 29 Jan 2026
Viewed by 127
Abstract
Leaf Area Index (LAI) is the total leaf area per unit of land surface area and is a crucial parameter for assessing vegetation growth and productivity. Machine learning regression algorithms are widely applied for LAI estimation. Due to spectral response variations among sensors [...] Read more.
Leaf Area Index (LAI) is the total leaf area per unit of land surface area and is a crucial parameter for assessing vegetation growth and productivity. Machine learning regression algorithms are widely applied for LAI estimation. Due to spectral response variations among sensors and susceptibility of mangrove-derived variables to environmental noise suppression, obtaining sensitivity indices and optimal machine learning regression models is essential for retrieving mangrove LAI at the population scale. This study proposes a novel approach to processing and retrieving mangrove LAI data by integrating multispectral indices with machine learning methods. Box–Cox transformation and CatBoost-based feature selection were employed to obtain the optimal dataset. Random Forest (RF), Gradient Boosting Regression Trees (GBRT), and Categorical Boosting (CatBoost) algorithms were used to evaluate the accuracy of LAI retrieval from Unmanned Aerial Vehicle (UAV) and Gaofen-6 (GF-6) data. Results indicate that when LAI > 3, LAI does not immediately saturate as CVI, MTVI 2, and other indices increase, demonstrating higher sensitivity. UAV data outperformed GF-6 data in retrieving LAI for diverse mangrove populations; during model training, RF proved more suitable for small-sample datasets, while CatBoost effectively suppressed environmental noise. Both RF and CatBoost demonstrated higher robustness in estimating Avicennia marina (AM) (RF: R2 = 0.704) and Aegiceras corniculatum (AC) (R2 = 0.766), respectively. Spatial distribution analysis of LAI indicates that healthy AM and AC cover 85.36% and 96.67% of the area, respectively. Spartina alterniflora and aquaculture wastewater may be among the factors affecting the health of mangrove forests in the study area. LAI retrieval holds significant importance for mangrove health monitoring and risk early warning. Full article
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43 pages, 1250 KB  
Review
Challenges and Opportunities in Tomato Leaf Disease Detection with Limited and Multimodal Data: A Review
by Yingbiao Hu, Huinian Li, Chengcheng Yang, Ningxia Chen, Zhenfu Pan and Wei Ke
Mathematics 2026, 14(3), 422; https://doi.org/10.3390/math14030422 - 26 Jan 2026
Viewed by 175
Abstract
Tomato leaf diseases cause substantial yield and quality losses worldwide, yet reliable detection in real fields remains challenging. Two practical bottlenecks dominate current research: (i) limited data, including small samples for rare diseases, class imbalance, and noisy field images, and (ii) multimodal heterogeneity, [...] Read more.
Tomato leaf diseases cause substantial yield and quality losses worldwide, yet reliable detection in real fields remains challenging. Two practical bottlenecks dominate current research: (i) limited data, including small samples for rare diseases, class imbalance, and noisy field images, and (ii) multimodal heterogeneity, where RGB images, textual symptom descriptions, spectral cues, and optional molecular assays provide complementary but hard-to-align evidence. This review summarizes recent advances in tomato leaf disease detection under these constraints. We first formalize the problem settings of limited and multimodal data and analyze their impacts on model generalization. We then survey representative solutions for limited data (transfer learning, data augmentation, few-/zero-shot learning, self-supervised learning, and knowledge distillation) and multimodal fusion (feature-, decision-, and hybrid-level strategies, with attention-based alignment). Typical model–dataset pairs are compared, with emphasis on cross-domain robustness and deployment cost. Finally, we outline open challenges—including weak generalization in complex field environments, limited interpretability of multimodal models, and the absence of unified multimodal benchmarks—and discuss future opportunities toward lightweight, edge-ready, and scalable multimodal systems for precision agriculture. Full article
(This article belongs to the Special Issue Structural Networks for Image Application)
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17 pages, 4221 KB  
Article
Mining Thermotolerant Candidate Genes Co-Responsive to Heat Stress in Wheat Flag Leaves and Grains Using WGCNA Analysis
by Liangpeng Chen, Zhengcong Xu, Wensheng Lin, Junkang Rong and Xin Hu
Agronomy 2026, 16(3), 300; https://doi.org/10.3390/agronomy16030300 - 25 Jan 2026
Viewed by 195
Abstract
As a critically important global food crop, wheat has been increasingly threatened by the frequent occurrence of extreme high-temperature events, which impairs its growth and development, resulting in reduced seed-setting rate, compromised grain quality and diminished yield. Therefore, identifying heat-tolerant genes and enhancing [...] Read more.
As a critically important global food crop, wheat has been increasingly threatened by the frequent occurrence of extreme high-temperature events, which impairs its growth and development, resulting in reduced seed-setting rate, compromised grain quality and diminished yield. Therefore, identifying heat-tolerant genes and enhancing thermotolerance through molecular breeding are essential strategies for wheat improvement. In this study, we retrieved spatial transcriptomic data from the public database PRJNA427246, which captured gene expression profiles in flag leaves and grains of the heat-sensitive wheat cultivar Chinese Spring (CS) under 37 °C heat stress at time points of 0 min, 5 min, 10 min, 30 min, 1 h, and 4 h. Weighted Gene Co-expression Network Analysis (WGCNA) was used to construct co-expression networks for flag leaf and grain transcriptomes. One highly significant module was identified in each tissue, along with 35 hub genes that showed a strong temporal association with heat stress progression. Notably, both modules contained the previously characterized thermotolerance gene TaMBF1c, suggesting that additional heat-responsive genes may be present within these modules. Simultaneous analysis of the expression data from four groups (encompassing different tissues and high-temperature treatments) for the 35 core genes revealed that genes from the TaHSP20 family, TaMBF1c family, and other related genes exhibit coordinated expression patterns in terms of the temporal dynamics and tissue distribution of stress responses. Additionally, 27 genes of the small heat shock protein (HSP20) family are predicted to be involved in the endoplasmic reticulum-associated degradation (ERAD) pathway. They assist in clearing misfolded proteins induced by stress, thereby helping to maintain endoplasmic reticulum homeostasis and cellular functions under stress conditions. Finally, the expression levels of three core genes, TaHSP20-1, TaPCDP4, and TaMBF1c-D, were validated by qRT-PCR in two wheat cultivars with distinct thermotolerance: S116 (Zhehuamai 2008) and S128 (Yangmai 33). These findings provide new insights into the molecular mechanisms underlying heat tolerance in wheat and offer valuable genetic resources for breeding thermotolerant varieties. Full article
(This article belongs to the Special Issue Enhancing Wheat Yield Through Sustainable Farming Practices)
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19 pages, 5603 KB  
Article
MFF-Net: A Study on Soil Moisture Content Inversion in a Summer Maize Field Based on Multi-Feature Fusion of Leaf Images
by Jianqin Ma, Jiaqi Han, Bifeng Cui, Xiuping Hao, Zhengxiong Bai, Yijian Chen, Yan Zhao and Yu Ding
Agriculture 2026, 16(3), 298; https://doi.org/10.3390/agriculture16030298 - 23 Jan 2026
Viewed by 325
Abstract
Current agricultural irrigation management practices are often extensive, and traditional soil moisture content (SMC) monitoring methods are inefficient, so there is a pressing need for innovative approaches in precision irrigation. This study proposes a Multi-Feature Fusion Network (MFF-Net) for SMC inversion. The model [...] Read more.
Current agricultural irrigation management practices are often extensive, and traditional soil moisture content (SMC) monitoring methods are inefficient, so there is a pressing need for innovative approaches in precision irrigation. This study proposes a Multi-Feature Fusion Network (MFF-Net) for SMC inversion. The model uses a designed Channel-Changeable Residual Block (ResBlockCC) to construct a multi-branch feature extraction and fusion architecture. Integrating the Channel Squeeze and Spatial Excitation (sSE) attention module with U-Net-like skip connections, MFF-Net inverts root-zone SMC from summer maize leaf images. Field experiments were conducted in Zhengzhou, Henan Province, China, from 2024 to 2025, under three irrigation treatments: 60–70% θfc, 70–90% θfc, and 60–90% θfc (θfc denotes field capacity). This study shows that (1) MFF-Net achieved its smallest inversion error under the 60–70% θfc treatment, suggesting the inversion was most effective when SMC variation was small and relatively low; (2) MFF-Net demonstrated superior performance to several benchmark models, achieving an R2 of 0.84; and (3) the ablation study confirmed that each feature branch and the sSE attention module contributed positively to model performance. MFF-Net thus offers a technological reference for real-time precision irrigation and shows promise for field SMC inversion in summer maize. Full article
(This article belongs to the Section Agricultural Soils)
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21 pages, 9353 KB  
Article
YOLOv10n-Based Peanut Leaf Spot Detection Model via Multi-Dimensional Feature Enhancement and Geometry-Aware Loss
by Yongpeng Liang, Lei Zhao, Wenxin Zhao, Shuo Xu, Haowei Zheng and Zhaona Wang
Appl. Sci. 2026, 16(3), 1162; https://doi.org/10.3390/app16031162 - 23 Jan 2026
Viewed by 158
Abstract
Precise identification of early peanut leaf spot is strategically significant for safeguarding oilseed supplies and reducing pesticide reliance. However, general-purpose detectors face severe domain adaptation bottlenecks in unstructured field environments due to small feature dissipation, physical occlusion, and class imbalance. To address this, [...] Read more.
Precise identification of early peanut leaf spot is strategically significant for safeguarding oilseed supplies and reducing pesticide reliance. However, general-purpose detectors face severe domain adaptation bottlenecks in unstructured field environments due to small feature dissipation, physical occlusion, and class imbalance. To address this, this study constructs a dataset spanning two phenological cycles and proposes POD-YOLO, a physics-aware and dynamics-optimized lightweight framework. Anchored on the YOLOv10n architecture and adhering to a “data-centric” philosophy, the framework optimizes the parameter convergence path via a synergistic “Augmentation-Loss-Optimization” mechanism: (1) Input Stage: A Physical Domain Reconstruction (PDR) module is introduced to simulate physical occlusion, blocking shortcut learning and constructing a robust feature space; (2) Loss Stage: A Loss Manifold Reshaping (LMR) mechanism is established utilizing dual-branch constraints to suppress background gradients and enhance small target localization; and (3) Optimization Stage: A Decoupled Dynamic Scheduling (DDS) strategy is implemented, integrating AdamW with cosine annealing to ensure smooth convergence on small-sample data. Experimental results demonstrate that POD-YOLO achieves a 9.7% precision gain over the baseline and 83.08% recall, all while maintaining a low computational cost of 8.4 GFLOPs. This study validates the feasibility of exploiting the potential of lightweight architectures through optimization dynamics, offering an efficient paradigm for edge-based intelligent plant protection. Full article
(This article belongs to the Section Optics and Lasers)
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18 pages, 4233 KB  
Article
Construction and Application of Real-Time Monitoring Model of Nitrogen Nutrition Status of Peanut Population Based on Improved YOLOv11
by Tianye Zhu, Haitao Fu, Yuxuan Feng, Xin Pan and Li Zhu
Appl. Sci. 2026, 16(2), 1041; https://doi.org/10.3390/app16021041 - 20 Jan 2026
Viewed by 93
Abstract
In response to the demand for real-time monitoring of the nitrogen nutritional status of peanut populations, this paper proposes a real-time monitoring system for the nitrogen nutritional status of peanut populations based on the YOLOv11 framework and spectral attention module. Traditional nitrogen detection [...] Read more.
In response to the demand for real-time monitoring of the nitrogen nutritional status of peanut populations, this paper proposes a real-time monitoring system for the nitrogen nutritional status of peanut populations based on the YOLOv11 framework and spectral attention module. Traditional nitrogen detection methods have problems such as low efficiency and difficulty in achieving population-scale monitoring, while crop phenotyping technology based on computer vision faces challenges such as small leaf targets, severe occlusion, easy confusion of nitrogen deficiency symptoms, and difficulty in deploying deep learning models on mobile terminals. This study improves the YOLOv11 model, introduces the ASF (Attentional Scale Fusion) module and the DySample dynamic upsampling mechanism, enhances the model’s perception and feature expression capabilities for multi-scale targets, and effectively improves the monitoring accuracy and robustness of the nitrogen nutritional status of peanut populations. Experimental results show that the ADS-YOLO model performs well in evaluation indicators such as accuracy, recall, and mean average precision (mAP), providing technical support for precision fertilization of peanuts. Full article
(This article belongs to the Section Agricultural Science and Technology)
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21 pages, 1113 KB  
Review
Molecular Mechanisms of Insect Resistance in Rice and Their Application in Sustainable Pest Management
by Dilawar Abbas, Kamran Haider, Farman Ullah, Umer Liaqat, Naveed Akhtar, Yubin Li and Maolin Hou
Insects 2026, 17(1), 111; https://doi.org/10.3390/insects17010111 - 19 Jan 2026
Viewed by 430
Abstract
Rice is a key food crop worldwide, but its yield and quality are severely constrained by insect pests. As environmental and regulatory restrictions on chemical pesticides grow, developing insect-resistant rice varieties has become a sustainable way to protect food security. This review covers [...] Read more.
Rice is a key food crop worldwide, but its yield and quality are severely constrained by insect pests. As environmental and regulatory restrictions on chemical pesticides grow, developing insect-resistant rice varieties has become a sustainable way to protect food security. This review covers recent progress in functional genomics and molecular marker mapping related to insect resistance in rice. We highlight the identification, cloning, and functional analysis of resistance genes targeting major pests, including the brown planthopper, rice gall midge, white-backed planthopper, small brown planthopper, and rice leaf roller. Several important resistance genes (such as Bph14, Bph3, and Bph29) have been cloned, and their roles in rice immunity have been clarified—covering insect feeding signal recognition, activation of salicylic acid and jasmonic acid pathways, and regulation of MAPK cascades, calcium signaling, and reactive oxygen species production. We also discuss how molecular marker-assisted selection, gene pyramiding, and transgenic techniques are used in modern rice breeding. Finally, we address future challenges and opportunities, stressing the importance of utilizing wild rice germplasm, understanding insect effector–plant immune interactions, and applying molecular design breeding to create long-lasting insect-resistant rice varieties that can withstand changing pest pressures and climate conditions. Full article
(This article belongs to the Special Issue The 3M Approach to Insecticide Resistance in Insects)
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17 pages, 2852 KB  
Article
A Lightweight Edge-AI System for Disease Detection and Three-Level Leaf Spot Severity Assessment in Strawberry Using YOLOv10n and MobileViT-S
by Raikhan Amanova, Baurzhan Belgibayev, Madina Mansurova, Madina Suleimenova, Gulshat Amirkhanova and Gulnur Tyulepberdinova
Computers 2026, 15(1), 63; https://doi.org/10.3390/computers15010063 - 16 Jan 2026
Viewed by 263
Abstract
Mobile edge-AI plant monitoring systems enable automated disease control in greenhouses and open fields, reducing dependence on manual inspection and the variability of visual diagnostics. This paper proposes a lightweight two-stage edge-AI system for strawberries, in which a YOLOv10n detector on board a [...] Read more.
Mobile edge-AI plant monitoring systems enable automated disease control in greenhouses and open fields, reducing dependence on manual inspection and the variability of visual diagnostics. This paper proposes a lightweight two-stage edge-AI system for strawberries, in which a YOLOv10n detector on board a mobile agricultural robot locates leaves affected by seven common diseases (including Leaf Spot) with real-time capability on an embedded platform. Patches are then automatically extracted for leaves classified as Leaf Spot and transmitted to the second module—a compact MobileViT-S-based classifier with ordinal output that assesses the severity of Leaf Spot on three levels (S1—mild, S2—moderate, S3—severe) on a specialised set of 373 manually labelled leaf patches. In a comparative experiment with lightweight architectures ResNet-18, EfficientNet-B0, MobileNetV3-Small and Swin-Tiny, the proposed Ordinal MobileViT-S demonstrated the highest accuracy in assessing the severity of Leaf Spot (accuracy ≈ 0.97 with 4.9 million parameters), surpassing both the baseline models and the standard MobileViT-S with a cross-entropy loss function. On the original image set, the YOLOv10n detector achieves an mAP@0.5 of 0.960, an F1 score of 0.93 and a recall of 0.917, ensuring reliable detection of affected leaves for subsequent Leaf Spot severity assessment. The results show that the “YOLOv10n + Ordinal MobileViT-S” cascade provides practical severity-aware Leaf Spot diagnosis on a mobile agricultural robot and can serve as the basis for real-time strawberry crop health monitoring systems. Full article
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22 pages, 2873 KB  
Article
Resource-Constrained Edge AI Solution for Real-Time Pest and Disease Detection in Chili Pepper Fields
by Hoyoung Chung, Jin-Hwi Kim, Junseong Ahn, Yoona Chung, Eunchan Kim and Wookjae Heo
Agriculture 2026, 16(2), 223; https://doi.org/10.3390/agriculture16020223 - 15 Jan 2026
Viewed by 292
Abstract
This paper presents a low-cost, fully on-premise Edge Artificial Intelligence (AI) system designed to support real-time pest and disease detection in open-field chili pepper cultivation. The proposed architecture integrates AI-Thinker ESP32-CAM module (ESP32-CAM) image acquisition nodes (“Sticks”) with a Raspberry Pi 5–based edge [...] Read more.
This paper presents a low-cost, fully on-premise Edge Artificial Intelligence (AI) system designed to support real-time pest and disease detection in open-field chili pepper cultivation. The proposed architecture integrates AI-Thinker ESP32-CAM module (ESP32-CAM) image acquisition nodes (“Sticks”) with a Raspberry Pi 5–based edge server (“Module”), forming a plug-and-play Internet of Things (IoT) pipeline that enables autonomous operation upon simple power-up, making it suitable for aging farmers and resource-limited environments. A Leaf-First 2-Stage vision model was developed by combining YOLOv8n-based leaf detection with a lightweight ResNet-18 classifier to improve the diagnostic accuracy for small lesions commonly occurring in dense pepper foliage. To address network instability, which is a major challenge in open-field agriculture, the system adopted a dual-protocol communication design using Hyper Text Transfer Protocol (HTTP) for Joint Photographic Experts Group (JPEG) transmission and Message Queuing Telemetry Transport (MQTT) for event-driven feedback, enhanced by Redis-based asynchronous buffering and state recovery. Deployment-oriented experiments under controlled conditions demonstrated an average end-to-end latency of 0.86 s from image capture to Light Emitting Diode (LED) alert, validating the system’s suitability for real-time decision support in crop management. Compared to heavier models (e.g., YOLOv11 and ResNet-50), the lightweight architecture reduced the computational cost by more than 60%, with minimal loss in detection accuracy. This study highlights the practical feasibility of resource-constrained Edge AI systems for open-field smart farming by emphasizing system-level integration, robustness, and real-time operability, and provides a deployment-oriented framework for future extension to other crops. Full article
(This article belongs to the Special Issue Smart Sensor-Based Systems for Crop Monitoring)
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