Advance Search
TIAN Zijian,YANG Kang,WU Jiaqi,et al. LMIENet enhanced object detection method for low light environment inunderground mines[J]. Coal Science and Technology,xxxx,xx(x): x−xx. doi: 10.12438/cst.2023-0675
Citation: TIAN Zijian,YANG Kang,WU Jiaqi,et al. LMIENet enhanced object detection method for low light environment inunderground mines[J]. Coal Science and Technology,xxxx,xx(x): x−xx. doi: 10.12438/cst.2023-0675

LMIENet enhanced object detection method for low light environment inunderground mines

  • The underground working environment of coal mines is complex, with unfavorable factors such as low brightness of artificial light sources, high dust content, and high water vapor density. This leads to difficulties in extracting features and low accuracy of object recognition and positioning when existing object detection algorithms are applied to coal mines. An object detection algorithm for low illumination environments in coal mines is proposed, which consists of an low-light mine image enhancement module LMIENet and a object detection module. The image enhancement module is used to improve the image quality of the original image, restore various image information, and then use a target detection network to perform specific target detection on the enhanced image, effectively improving the accuracy of detection. In the image enhancement module, a lightweight enhancement parameter prediction network is designed with reference to the zero reference depth curve estimation algorithm, and the pixel level enhancement parameter matrix is calculated for image quality enhancement and brightness adjustment of low light images. The network implicitly measures the image enhancement effect through the designed non-reference loss function, and guides the network to conduct unsupervised learning, Enable the network to adaptively enhance the image quality of the original image without relying on paired datasets. In the object detection module, the YOLOv8 n object detection model is adopted, which has a lightweight model size and high flexibility to avoid excessive overall model complexity; Using Focal EIoU Loss to improve regression loss, accelerate model convergence, and improve model detection accuracy. The experimental results show that compared with classic object detection algorithms such as Faster R–CNN, SSD, RetinaNet, etc., the proposed algorithm performs well on the self-made coal mine object detection dataset, and is effective in object detection in low light environments mAP@0.5 reaches 98.0%, mAP@0.5 0.95 reaches 64.8%, and the running time of a single frame image in the experimental environment is only 6.8 ms, which is superior to other comparison methods. It is proven that the proposed algorithm can effectively achieve object detection in low illumination and complex environments in coal mines, with short time consumption and high computational efficiency.
  • loading

Catalog

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return