Lightweight CNN and its application in coal mine intelligent video surveillance
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摘要: 煤矿井下海量的监控视频通过以太网传输至云计算中心进行集中处理,存在高延迟、高成本、高网络带宽占用等问题。针对上述问题,以深度可分离卷积为核心构建了轻量化卷积神经网络(CNN)模型,并通过引入残差结构对轻量化CNN模型进行优化,以提升模型对图像的特征提取能力。针对煤矿井下复杂的光照环境导致监控视频图像对比度低、影响模型识别准确率的问题,采用限制对比度直方图均衡化(CLAHE)算法提高图像的亮度和对比度,以提升模型的识别效果。将轻量化CNN模型经STM32Cube AI压缩后部署在嵌入式平台上,设计了基于轻量化CNN模型的视频监控终端,对煤矿井下监控视频在本地进行实时智能处理,实现井下违章行为实时识别和报警。实验结果表明,通过引入残差结构对轻量化CNN模型进行优化,以及采用CLAHE算法进行图像增强后,模型对煤矿井下各种违章行为的识别准确率能够达到95%以上,提升了对违章行为响应的实时性。Abstract: The massive amount of surveillance video in coal mines is transmitted to the cloud computing center for centralized processing through Ethernet. This method has problems such as high latency, high cost and high network bandwidth occupation. To address the above problems, a lightweight convolutional neural network (CNN) model is constructed with depthwise separable convolution as the core. Moreover, the lightweight CNN model is optimized by introducing the residual structure to improve the image feature extraction ability. The low contrast of surveillance video images caused by the complex lighting environment in coal mines affects the recognition accuracy of the model. Hence, the contrast limited adaptive histogram equalization (CLAHE) algorithm is used to improve the brightness and contrast of images so as to improve the recognition effect of the model. The lightweight CNN model is compressed by STM32Cube AI and deployed on the embedded platform. A video surveillance terminal based on the lightweight CNN model is designed to perform real-time and intelligent processing of coal mine surveillance video locally to achieve real-time identification and alarming of coal mine violations. Experimental results show that by introducing the residual structure to optimize the lightweight CNN model and using the CLAHE algorithm for image enhancement, the model can achieve an accuracy of more than 95% for recognizing various violations in coal mines and improve real-time response to violations.
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