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Sensors

Sensors is an international, peer-reviewed, open access journal on the science and technology of sensors, published semimonthly online by MDPI. 
Indexed in PubMed | Quartile Ranking JCR - Q2 (Instruments and Instrumentation | Chemistry, Analytical | Engineering, Electrical and Electronic)

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Drone-mounted ground-penetrating radar (GPR) systems offer new opportunities for integrating subsurface characterization into remote sensing workflows. However, the interaction between flight parameters, surface conditions, and vegetation characteristics remains poorly understood. This study investigates the impact of flight altitude, surface topography, crop presence, and canopy water content on the stability and interpretability of GPR signals collected using a drone. Field experiments were conducted under controlled conditions using agricultural plots with variable canopy cover and soil moisture regimes. Radargrams were processed to evaluate signal amplitude, reflection continuity, and attenuation patterns in relation to terrain slope and vegetation structure derived from co-registered RGB drone imagery. The results reveal that lower flight altitudes and smoother surfaces yield higher signal coherence and greater subsurface penetration, while increased canopy water content and biomass reduce signal strength and clarity. Integrating drone-based GPR observations with surface spectral and thermal data improved discrimination between soil and vegetation-induced signal distortions. The findings highlight the potential of drone–GPR systems as a complementary layer in a multi-sensor remote sensing framework for precision agriculture, environmental monitoring, and 3D soil mapping.

16 March 2026

Main-lobe geometry for (a) drone-mounted and (b) ground-based GPR. 
  
    
      
        R
      
      
        1
      
    
  
 and 
  
    
      
        R
      
      
        2
      
    
  
 denote footprint radii at the soil surface and at depth Z; H is antenna height.

Sensors constitute a fundamental element of modern digital healthcare, acting as the primary interface for capturing physiological, environmental, and biomechanical data from patients and clinical settings [...]

16 March 2026

Terrain segmentation performance directly affects the reliability of robotic environmental perception and decision making, yet most existing methods are built upon the assumptions of fixed sensing configurations and closed label sets. As a result, they struggle to meet real world outdoor requirements where modalities can be dynamically available and semantic classes continually expand. This paper systematically studies open-vocabulary terrain segmentation under arbitrary imaging modality combinations and proposes a unified foundation model-based framework named AIM-SEEM (SEEM for Arbitrary Imaging Modalities). Built upon Segment Everything Everywhere All at Once (SEEM), AIM-SEEM performs stable input side adaptation and controlled fusion of heterogeneous modalities, maximizing the reuse of pre-trained visual priors to accommodate different modality types and counts. Furthermore, to address the distribution shifts and the resulting vision–text alignment degradation caused by modality extension, a vision-guided text calibration mechanism is introduced to preserve open-vocabulary segmentation capability under multi-modality combination inputs. Experiments on two benchmarks under three evaluation settings, including full-modality, modality-agnostic, and open-vocabulary, show that AIM-SEEM consistently outperforms prior methods.

16 March 2026

Integrating wav2vec 2.0 with Connectionist Temporal Classification (CTC) for automatic speech recognition (ASR) often involves a trade-off between capturing global semantic consistency and maintaining local feature discriminability. This study proposes DBA-wav2vec 2.0, an architecture designed to manage these modeling requirements by decoupling temporal modeling into parallel local and global streams at the encoder–decoder interface. Depthwise separable convolutions are utilized to capture local acoustic structures, while a self-attention path is retained for long-range dependencies. A task-aware gating mechanism is introduced to integrate these heterogeneous features. By adjusting fusion weights based on acoustic input characteristics, the gate facilitates the refinement of posterior probability distributions, leading to more distinct alignment points. Experimental results on AISHELL-1 and ST-CMDS datasets show relative Character Error Rate (CER) reductions of 6.4% and 7.4%, respectively, compared to a baseline wav2vec 2.0 model. Further evaluations under varying speaking rates demonstrate a 15.3% relative improvement in fast-speech scenarios, suggesting that structural adaptation at the decoding interface can enhance the robustness of CTC-based systems against temporal variations.

16 March 2026

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Sensors - ISSN 1424-8220