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MS-FRCNN: A Multi-Scale Faster RCNN Model for Small Target Forest Fire Detection
by
Wang, Mingyang
, Bu, Xiangfeng
, Zhang, Lin
, Ding, Yunhong
in
Accuracy
/ Aerial photography
/ Algorithms
/ Artificial neural networks
/ Computer networks
/ Datasets
/ Deep learning
/ Drone aircraft
/ Error detection
/ Error reduction
/ Feature extraction
/ Feature maps
/ fire detection
/ Firefighters
/ Forest & brush fires
/ Forest fire detection
/ Forest fires
/ forests
/ Ground cover
/ Methods
/ Neural networks
/ Observations
/ Parallel operation
/ Performance enhancement
/ Remote sensing
/ Risk assessment
/ Semantics
/ Target detection
/ Unmanned aerial vehicles
/ vegetation cover
2023
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MS-FRCNN: A Multi-Scale Faster RCNN Model for Small Target Forest Fire Detection
by
Wang, Mingyang
, Bu, Xiangfeng
, Zhang, Lin
, Ding, Yunhong
in
Accuracy
/ Aerial photography
/ Algorithms
/ Artificial neural networks
/ Computer networks
/ Datasets
/ Deep learning
/ Drone aircraft
/ Error detection
/ Error reduction
/ Feature extraction
/ Feature maps
/ fire detection
/ Firefighters
/ Forest & brush fires
/ Forest fire detection
/ Forest fires
/ forests
/ Ground cover
/ Methods
/ Neural networks
/ Observations
/ Parallel operation
/ Performance enhancement
/ Remote sensing
/ Risk assessment
/ Semantics
/ Target detection
/ Unmanned aerial vehicles
/ vegetation cover
2023
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MS-FRCNN: A Multi-Scale Faster RCNN Model for Small Target Forest Fire Detection
by
Wang, Mingyang
, Bu, Xiangfeng
, Zhang, Lin
, Ding, Yunhong
in
Accuracy
/ Aerial photography
/ Algorithms
/ Artificial neural networks
/ Computer networks
/ Datasets
/ Deep learning
/ Drone aircraft
/ Error detection
/ Error reduction
/ Feature extraction
/ Feature maps
/ fire detection
/ Firefighters
/ Forest & brush fires
/ Forest fire detection
/ Forest fires
/ forests
/ Ground cover
/ Methods
/ Neural networks
/ Observations
/ Parallel operation
/ Performance enhancement
/ Remote sensing
/ Risk assessment
/ Semantics
/ Target detection
/ Unmanned aerial vehicles
/ vegetation cover
2023
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MS-FRCNN: A Multi-Scale Faster RCNN Model for Small Target Forest Fire Detection
Journal Article
MS-FRCNN: A Multi-Scale Faster RCNN Model for Small Target Forest Fire Detection
2023
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Overview
Unmanned aerial vehicles (UAVs) are widely used for small target detection of forest fires due to its low-risk rate, low cost and high ground coverage. However, the detection accuracy of small target forest fires is still not ideal due to its irregular shape, different scale and how easy it can be blocked by obstacles. This paper proposes a multi-scale feature extraction model (MS-FRCNN) for small target forest fire detection by improving the classic Faster RCNN target detection model. In the MS-FRCNN model, ResNet50 is used to replace VGG-16 as the backbone network of Faster RCNN to alleviate the gradient explosion or gradient dispersion phenomenon of VGG-16 when extracting the features. Then, the feature map output by ResNet50 is input into the Feature Pyramid Network (FPN). The advantage of multi-scale feature extraction for FPN will help to improve the ability of the MS-FRCNN to obtain detailed feature information. At the same time, the MS-FRCNN uses a new attention module PAM in the Regional Proposal Network (RPN), which can help reduce the influence of complex backgrounds in the images through the parallel operation of channel attention and space attention, so that the RPN can pay more attention to the semantic and location information of small target forest fires. In addition, the MS-FRCNN model uses a soft-NMS algorithm instead of an NMS algorithm to reduce the error deletion of the detected frames. The experimental results show that, compared to the baseline model, the proposed MS-FRCNN in this paper achieved a better detection performance of small target forest fires, and its detection accuracy was 5.7% higher than that of the baseline models. It shows that the strategy of multi-scale image feature extraction and the parallel attention mechanism to suppress the interference information adopted in the MS-FRCNN model can really improve the performance of small target forest fire detection.
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