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Research on Safety Helmet Detection Method Based on Convolutional Neural Network

机译:基于卷积神经网络的安全帽检测方法研究

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By combining artificial neural network with deep learning technology, convolution neural network is characterized by local perception, adaptive feature extraction and end-to-end application, etc., and it has been used in image recognition and target detection more and more in recent years. Problems are existing widely in the traditional safety helmet detection algorithm generally such as the severe background interference, complex computing, high time-complexity and largely fluctuant accuracy. A detective method for safety helmet based on deep convolution network was proposed in this paper, which first decoded the acquired video monitoring data for a number of YUV images, then to determine the detecting area in the image, and transfer the YUV component image in the detecting area to the RGB image data; then in which to determine the training set and detecting set; finally, based on the constructed convolution neural network model to compute and process to acquire the ultimate detective results.
机译:通过将人工神经网络与深度学习技术相结合,卷积神经网络具有局部感知,自适应特征提取和端到端应用等特点,近年来已越来越多地用于图像识别和目标检测。 。传统安全头盔检测算法普遍存在着背景干扰严重,计算复杂,时间复杂度高,精度波动大等问题。提出了一种基于深度卷积网络的安全头盔检测方法,该方法首先对获取的许多YUV图像的视频监控数据进行解码,然后确定图像中的检测区域,然后在YUV分量图像中进行传输。检测到RGB图像数据的区域;然后在其中确定训练集和检测集;最后,基于所构建的卷积神经网络模型进行计算和处理,以获取最终的检测结果。

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