Floodborne Objects Type Recognition Using Computer Vision to Mitigate Blockage Originated Floods
Abstract
:1. Introduction
2. Related Work
3. Materials and Methods
3.1. Floodborne Objects Recognition Dataset (FORD)
3.2. Background to Computer Vision Object Detection Models
3.2.1. Faster R-CNN
3.2.2. You Only Look Once version 4 (YOLOv4)
3.3. Research Approach
- Stage I: Data Preparation—At the first stage, the raw images from the WCC records were processed and annotated for training the computer vision object detection models. In context to data processing stage, firstly, the images from the records were manually sorted to select the suitable candidates for training. Presence of floodborne objects accumulated at culverts or within the catchment was used as the criterion to sort the images. Secondly, the selected images were cropped where required to remove the background noise and were converted to unified format for consistency. Once the final set of images was decided, they were annotated/labelled with ground truth bounding boxes of vegetation and urban objects in the images. For the labelling of images, an open source image annotation tool called LabelImg [65] was used, which, by default, saved the labels in XML format (i.e., one of the formats to which bounding box labels can be saved). Within the computer vision domain, there are different platforms developed to facilitate the training of the state-of-the-art models, including Detectron2, TensorFlow Object Detection API, NVIDIA Train Adapt Optimize (TAO) and DarkNet. Each of these platforms requires the ground truth labels to be stored in a specific data format, for example, Detectron2 accepts .json format labels, TensorFlow API accepts XML format labels, NVIDIA TAO accepts KITTI labels and DarkNet accepts .txt format labels. For this research, NVIDIA TAO toolkit was used for training, which is a framework designed to simplify and accelerate the development of AI-oriented industrial solutions.
- Stage II: AI Development—At the second stage, the AI models were developed and trained using the labelled data from Stage I. In the process of AI development, firstly, the object detection models were selected from the available model zoo based on the performance reported in the literature. As a result, keeping the robustness and hardware deployment as key factors, Faster R-CNN (i.e., robust detection performance) and YOLOv4 (i.e., suitable for hardware deployment) model variants were selected to be trained for the floodborne object type recognition problem. Secondly, for each selected model, hyperparameters, including training epochs, learning rate, optimization function and regularization technique, were set using default off-the-shelf values. Furthermore, different data augmentation techniques (i.e., one of the conventional approaches used in computer vision model training where input image is subjected to different transformations towards creating multiple variants of same image) were also used during the training process to enhance the performance. All the models reported in this study were trained using the NVIDIA TAO platform.
- Stage III: Training Evaluation—At the third stage, the models were evaluated for their performance during the training phase using different standard evaluation measures including training loss per epoch, training time per epoch and validation mAP. In context of the deep learning computer vision models, the loss of a model refers to the prediction error (i.e., predicted-actual) and is a measure to assess how well a model has performed. In the training process, deep learning models use optimization functions (e.g., Stochastic Gradient Descent (SGD), Adaptive Momentum (adam)) with the objective to minimize the loss function using the backpropagation approach. The aim of assessing the training performance is to ensure that the training process did not involve any abnormal behaviour, specifically overfitting. Training loss and mAP curves are standard indicators to observe any abnormalities. Usually, for a normal training process, the loss curve should follow the negative exponential trend, while the mAP should follow the positive exponential trend.
- Stage IV: Test Evaluation—At the fourth stage, the trained object detection models were evaluated against the unseen validation data and were compared to identify the best performing model(s). Evaluation was performed using test mAP and AP for each of the two floodborne object classes.
- Stage V: Discussion—At the fifth and final stage, the inference results from the models, specifically with best test performance, were analysed and discussed in detail to report the important insights from the experiments. Furthermore, performance of the proposed approach was linked with existing literature, and different implications of the research were presented. In addition, potential limitations of the research were highlighted, and future directions were discussed.
4. Experimental Protocols and Evaluation Measures
5. Results
5.1. Training Performance
5.2. Testing Performance
6. Discussion
6.1. Research Implications
6.2. Limitations and Future Directions
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
YOLO | You Only Look Once |
CNN | Convolutional Neural Network |
RPN | Region Proposal Network |
FORD | Floodborne Objects Recognition Dataset |
AP | Average Precision |
mAP | Mean Average Precision |
IoU | Intersection of Union |
SVM | Support Vector Machine |
MAP | Feature Map Attention |
FLS | Forward Looking Sonar Images |
WCC | Wollongong City Council |
ICOB | Images of Culvert Opening and Blockage |
VHD | Visual Hydraulics-Lab Dataset |
CSP | Cross Stage Partial Connections |
SAT | Self Adversarial Training |
WRC | Weighted Residual Connections |
CmBN | Cross Mini-Batch Normalizations |
TAO | Train Adapt Optimize |
SGD | Stochastic Gradient Descent |
Adam | Adaptive Momentum |
GPU | Graphical Processing Unit |
GANs | Generative Adversarial Networks |
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Author | Year | Addressed Problem | Dataset | Proposed Approach | Performance |
---|---|---|---|---|---|
MacVicar and Piegay [54] | 2012 | wood detection | custom dataset | conventional methods | NA |
Benacchio et al. [55] | 2017 | wood detection | custom dataset | conventional methods | of |
Lieshout et al. [48] | 2020 | floating plastic | custom dataset | Faster R-CNN | mAp of |
debris detection | (1300 images) | 68.7% | |||
Cheng et al. [46] | 2021 | marine debris | custom dataset | DSSD, RetinaNet, | mAP of |
detection | (2000 images) | YOLOv3, Faster R-CNN | 43% for Cascade | ||
Cascade R-CNN | |||||
Ghaffarian et al. [56] | 2021 | river wood | NA | Conventional static | 21% improved |
detection | and dynamic masking | error rate | |||
Lin et al. [57] | 2021 | floating debris | custom dataset | Improved YOLOv5 | mAP of |
detection | (2400 images) | 77% | |||
Majchrowska et al. [58] | 2022 | waste material | TACO, TrashCan, | EfficientDet-D2 | mAP of |
detection | Trash-ICRA, UAVVaste, | EfficientNet-B2 | 70% | ||
drinking-waste | |||||
Aleem et al. [47] | 2022 | marine debris | FLS dataset | Faster R-CNN | IoU of |
detection | (1865 images) | 3.78 |
Model | Training Loss | mAP | Mean Precision | Mean Recall |
---|---|---|---|---|
Faster R-CNN Models | ||||
MobileNet Backbone | 0.1044 | 0.8601 | 0.2515 | 0.8827 |
ResNet18 Backbone | 0.3492 | 0.8642 | 0.0713 | 0.8990 |
YOLOv4 Models | ||||
ResNet18 Backbone | 34.87 | 0.8138 | NA | NA |
CSPDarkNet Backbone | 47.48 | 0.7804 | NA | NA |
Model | mAP | ||
---|---|---|---|
Faster R-CNN (Resnet18 Backbone) | 0.8007 | 0.7236 | 0.8778 |
Faster R-CNN (MobileNet Backbone) | 0.8445 | 0.7544 | 0.9345 |
YOLOv4 (ResNet18 Backbone) | 0.7826 | 0.7393 | 0.8331 |
YOLOv4 (CSPDarkNet Backbone) | 0.7616 | 0.7115 | 0.8114 |
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Iqbal, U.; Riaz, M.Z.B.; Barthelemy, J.; Hutchison, N.; Perez, P. Floodborne Objects Type Recognition Using Computer Vision to Mitigate Blockage Originated Floods. Water 2022, 14, 2605. https://doi.org/10.3390/w14172605
Iqbal U, Riaz MZB, Barthelemy J, Hutchison N, Perez P. Floodborne Objects Type Recognition Using Computer Vision to Mitigate Blockage Originated Floods. Water. 2022; 14(17):2605. https://doi.org/10.3390/w14172605
Chicago/Turabian StyleIqbal, Umair, Muhammad Zain Bin Riaz, Johan Barthelemy, Nathanael Hutchison, and Pascal Perez. 2022. "Floodborne Objects Type Recognition Using Computer Vision to Mitigate Blockage Originated Floods" Water 14, no. 17: 2605. https://doi.org/10.3390/w14172605
APA StyleIqbal, U., Riaz, M. Z. B., Barthelemy, J., Hutchison, N., & Perez, P. (2022). Floodborne Objects Type Recognition Using Computer Vision to Mitigate Blockage Originated Floods. Water, 14(17), 2605. https://doi.org/10.3390/w14172605