基于深度学习的库存外目标检测

Jinyin Chen, Zhen Wang, Kai Cheng, Hai-bin Zheng, An-tao Pan
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引用次数: 0

摘要

在城市管理领域,离店经营是重点治理对象之一。虽然监控探头多,视频数据量大,但由于采用传统技术,取证效率低,管理过程困难。“智慧城市管理”概念引入移动互联网、云计算等技术,实现城市管理向智慧管理的转变。本文提出了一种将图像处理技术与深度学习模型相结合的缺货检测方法。使用Faster R-CNN模型检测门店位置并识别店外物体,使用Visual Background Extractor (ViBe)方法确定店外是否有物体。最后,采用一定的数据处理方法,对出库现象进行记录和取证。通过试验数据对该方法进行了验证,结果表明该方法具有良好的检测效果,证明了该方法的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Out-of-store Object Detection Based on Deep Learning
In the field of urban management, out-of-store operation is one of the key governance objects. Although there are many monitoring probes and large amounts video data, the management process is difficult due to the traditional technology used and the low efficiency of evidence collection. The concept of "Smart Urban Management" has introduced technologies such as mobile internet and cloud computing to realize the transformation of urban management into intelligent management. This paper proposed an out-of-store detection method, which combines image processing technology with deep learning model. The Faster R-CNN model is used to detect store locations and identify the out-of-store objects, and Visual Background Extractor (ViBe) method is applied to determine whether there is object outside of the store or not. Finally, a certain data processing method is used to record and collect evidence of the out-of-store operation phenomenon. The method is verified on the test data and the results show that it has a good detection effect which also prove its application value.
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