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Papers/Large, Complex, and Realistic Safety Clothing and Helmet D...

Large, Complex, and Realistic Safety Clothing and Helmet Detection: Dataset and Method

Fusheng Yu, Jiang Li, XiaoPing Wang, Shaojin Wu, Junjie Zhang, Zhigang Zeng

2023-06-03Real-Time Object Detection2D Object Detectionobject-detectionObject DetectionSmall Object Detection
PaperPDFCode(official)

Abstract

Detecting safety clothing and helmets is paramount for ensuring the safety of construction workers. However, the development of deep learning models in this domain has been impeded by the scarcity of high-quality datasets. In this study, we construct a large, complex, and realistic safety clothing and helmet detection (SFCHD) dataset. SFCHD is derived from two authentic chemical plants, comprising 12,373 images, 7 categories, and 50,552 annotations. We partition the SFCHD dataset into training and testing sets with a ratio of 4:1 and validate its utility by applying several classic object detection algorithms. Furthermore, drawing inspiration from spatial and channel attention mechanisms, we design a spatial and channel attention-based low-light enhancement (SCALE) module. SCALE is a plug-and-play component with a high degree of flexibility. Extensive evaluations of the SCALE module on both the ExDark and SFCHD datasets have empirically demonstrated its efficacy in enhancing the performance of detectors under low-light conditions. The dataset and code are publicly available at https://github.com/lijfrank-open/SFCHD-SCALE.

Results

TaskDatasetMetricValueModel
Object DetectionSFCHDmAP@0.5078.6YOLOv8+SCALE
Object DetectionSFCHDmAP@0.5:0.9553.3YOLOv8+SCALE
Object DetectionSFCHDmAP@0.5079.3TOOD+SCALE
Object DetectionSFCHDmAP@0.5:0.9552.4TOOD+SCALE
Object DetectionSFCHDmAP@0.5078.9TOOD
Object DetectionSFCHDmAP@0.5:0.9552.3TOOD
Object DetectionSFCHDmAP@0.5077.9YOLOv8
Object DetectionSFCHDmAP@0.5:0.9552.2YOLOv8
Object DetectionSFCHDmAP@0.5076.6VFNet+SCALE
Object DetectionSFCHDmAP@0.5:0.9551.4VFNet+SCALE
Object DetectionSFCHDmAP@0.5076.4VFNet
Object DetectionSFCHDmAP@0.5:0.9551VFNet
Object DetectionSFCHDmAP@0.5076.4Faster RCNN
Object DetectionSFCHDmAP@0.5:0.9550.3Faster RCNN
Object DetectionSFCHDmAP@0.5076.4FCOS
Object DetectionSFCHDmAP@0.5:0.9549.6FCOS
Object DetectionSFCHDmAP@0.5074.1YOLOv5
Object DetectionSFCHDmAP@0.5:0.9549.6YOLOv5
Object DetectionSFCHDmAP@0.5076.3FCOS+SCALE
Object DetectionSFCHDmAP@0.5:0.9549.5FCOS+SCALE
Object DetectionSFCHDmAP@0.5075.9RetinaNet
Object DetectionSFCHDmAP@0.5:0.9548.9RetinaNet
Object DetectionSFCHDmAP@0.5072.8SSD
Object DetectionSFCHDmAP@0.5:0.9541.5SSD
3DSFCHDmAP@0.5078.6YOLOv8+SCALE
3DSFCHDmAP@0.5:0.9553.3YOLOv8+SCALE
3DSFCHDmAP@0.5079.3TOOD+SCALE
3DSFCHDmAP@0.5:0.9552.4TOOD+SCALE
3DSFCHDmAP@0.5078.9TOOD
3DSFCHDmAP@0.5:0.9552.3TOOD
3DSFCHDmAP@0.5077.9YOLOv8
3DSFCHDmAP@0.5:0.9552.2YOLOv8
3DSFCHDmAP@0.5076.6VFNet+SCALE
3DSFCHDmAP@0.5:0.9551.4VFNet+SCALE
3DSFCHDmAP@0.5076.4VFNet
3DSFCHDmAP@0.5:0.9551VFNet
3DSFCHDmAP@0.5076.4Faster RCNN
3DSFCHDmAP@0.5:0.9550.3Faster RCNN
3DSFCHDmAP@0.5076.4FCOS
3DSFCHDmAP@0.5:0.9549.6FCOS
3DSFCHDmAP@0.5074.1YOLOv5
3DSFCHDmAP@0.5:0.9549.6YOLOv5
3DSFCHDmAP@0.5076.3FCOS+SCALE
3DSFCHDmAP@0.5:0.9549.5FCOS+SCALE
3DSFCHDmAP@0.5075.9RetinaNet
3DSFCHDmAP@0.5:0.9548.9RetinaNet
3DSFCHDmAP@0.5072.8SSD
3DSFCHDmAP@0.5:0.9541.5SSD
2D ClassificationSFCHDmAP@0.5078.6YOLOv8+SCALE
2D ClassificationSFCHDmAP@0.5:0.9553.3YOLOv8+SCALE
2D ClassificationSFCHDmAP@0.5079.3TOOD+SCALE
2D ClassificationSFCHDmAP@0.5:0.9552.4TOOD+SCALE
2D ClassificationSFCHDmAP@0.5078.9TOOD
2D ClassificationSFCHDmAP@0.5:0.9552.3TOOD
2D ClassificationSFCHDmAP@0.5077.9YOLOv8
2D ClassificationSFCHDmAP@0.5:0.9552.2YOLOv8
2D ClassificationSFCHDmAP@0.5076.6VFNet+SCALE
2D ClassificationSFCHDmAP@0.5:0.9551.4VFNet+SCALE
2D ClassificationSFCHDmAP@0.5076.4VFNet
2D ClassificationSFCHDmAP@0.5:0.9551VFNet
2D ClassificationSFCHDmAP@0.5076.4Faster RCNN
2D ClassificationSFCHDmAP@0.5:0.9550.3Faster RCNN
2D ClassificationSFCHDmAP@0.5076.4FCOS
2D ClassificationSFCHDmAP@0.5:0.9549.6FCOS
2D ClassificationSFCHDmAP@0.5074.1YOLOv5
2D ClassificationSFCHDmAP@0.5:0.9549.6YOLOv5
2D ClassificationSFCHDmAP@0.5076.3FCOS+SCALE
2D ClassificationSFCHDmAP@0.5:0.9549.5FCOS+SCALE
2D ClassificationSFCHDmAP@0.5075.9RetinaNet
2D ClassificationSFCHDmAP@0.5:0.9548.9RetinaNet
2D ClassificationSFCHDmAP@0.5072.8SSD
2D ClassificationSFCHDmAP@0.5:0.9541.5SSD
2D Object DetectionSFCHDmAP@0.5078.6YOLOv8+SCALE
2D Object DetectionSFCHDmAP@0.5:0.9553.3YOLOv8+SCALE
2D Object DetectionSFCHDmAP@0.5079.3TOOD+SCALE
2D Object DetectionSFCHDmAP@0.5:0.9552.4TOOD+SCALE
2D Object DetectionSFCHDmAP@0.5078.9TOOD
2D Object DetectionSFCHDmAP@0.5:0.9552.3TOOD
2D Object DetectionSFCHDmAP@0.5077.9YOLOv8
2D Object DetectionSFCHDmAP@0.5:0.9552.2YOLOv8
2D Object DetectionSFCHDmAP@0.5076.6VFNet+SCALE
2D Object DetectionSFCHDmAP@0.5:0.9551.4VFNet+SCALE
2D Object DetectionSFCHDmAP@0.5076.4VFNet
2D Object DetectionSFCHDmAP@0.5:0.9551VFNet
2D Object DetectionSFCHDmAP@0.5076.4Faster RCNN
2D Object DetectionSFCHDmAP@0.5:0.9550.3Faster RCNN
2D Object DetectionSFCHDmAP@0.5076.4FCOS
2D Object DetectionSFCHDmAP@0.5:0.9549.6FCOS
2D Object DetectionSFCHDmAP@0.5074.1YOLOv5
2D Object DetectionSFCHDmAP@0.5:0.9549.6YOLOv5
2D Object DetectionSFCHDmAP@0.5076.3FCOS+SCALE
2D Object DetectionSFCHDmAP@0.5:0.9549.5FCOS+SCALE
2D Object DetectionSFCHDmAP@0.5075.9RetinaNet
2D Object DetectionSFCHDmAP@0.5:0.9548.9RetinaNet
2D Object DetectionSFCHDmAP@0.5072.8SSD
2D Object DetectionSFCHDmAP@0.5:0.9541.5SSD
16kSFCHDmAP@0.5078.6YOLOv8+SCALE
16kSFCHDmAP@0.5:0.9553.3YOLOv8+SCALE
16kSFCHDmAP@0.5079.3TOOD+SCALE
16kSFCHDmAP@0.5:0.9552.4TOOD+SCALE
16kSFCHDmAP@0.5078.9TOOD
16kSFCHDmAP@0.5:0.9552.3TOOD
16kSFCHDmAP@0.5077.9YOLOv8
16kSFCHDmAP@0.5:0.9552.2YOLOv8
16kSFCHDmAP@0.5076.6VFNet+SCALE
16kSFCHDmAP@0.5:0.9551.4VFNet+SCALE
16kSFCHDmAP@0.5076.4VFNet
16kSFCHDmAP@0.5:0.9551VFNet
16kSFCHDmAP@0.5076.4Faster RCNN
16kSFCHDmAP@0.5:0.9550.3Faster RCNN
16kSFCHDmAP@0.5076.4FCOS
16kSFCHDmAP@0.5:0.9549.6FCOS
16kSFCHDmAP@0.5074.1YOLOv5
16kSFCHDmAP@0.5:0.9549.6YOLOv5
16kSFCHDmAP@0.5076.3FCOS+SCALE
16kSFCHDmAP@0.5:0.9549.5FCOS+SCALE
16kSFCHDmAP@0.5075.9RetinaNet
16kSFCHDmAP@0.5:0.9548.9RetinaNet
16kSFCHDmAP@0.5072.8SSD
16kSFCHDmAP@0.5:0.9541.5SSD

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