基于深度学习的垃圾寄存点智能管理多任务网络

Yezhen Wang, Haobin Zheng, Changjiang Mao, Jing Zhang, Xiao Ke
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引用次数: 0

摘要

随着经济社会的发展和物质条件的大幅改善,生活垃圾的产生量迅速增长,已成为新型城镇化发展的制约因素。在过去的几年里,对生活垃圾行业的研究仅限于智能垃圾分类,而忽视了垃圾存储场所智能管理的作用。为了缓解这一问题,我们提出了一种基于深度学习的垃圾堆存点智能管理多任务网络,结合YoloV5、Deepsort、Insightface、Openpose等算法,实现基于实时监控视频的垃圾箱检测、垃圾箱状态识别与分析、人脸识别、动作识别、多目标跟踪。此外,我们提出了一个新的数据集,命名为垃圾桶状态,为现有的垃圾桶识别领域提供了有意义的补充。在WBS数据集上的实验验证了我们的方法优于其他垃圾点状态识别方法。此外,我们的网络经过训练,可以处理不同的垃圾沉积场景,在现实世界的测试中展示了最先进的性能。
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Deep Learning-based Multi-task Network for Intelligent Management of Garbage Deposit Points
With the economic and social development and the substantial improvement of material conditions, the generation of domestic waste has grown rapidly and has become a constraint factor for the development of new urbanization. In the past few years, research on the domestic waste industry has been limited to intelligent waste sorting, neglecting the role of intelligent management of waste storage sites. To relieve it, We propose a deep learning-based multi-task network for intelligent management of garbage deposit points, which combines algorithms such as YoloV5,Deepsort, Insightface, and Openpose to achieve waste bin detection, waste bin status recognition and analysis, face recognition, action recognition, and multiple object tracking based on real-time surveillance video. Besides, we propose a new dataset named Waste Bin Status, which provides a meaningful addition to the existing field of waste bin identification. Experiments on WBS dataset validate that our method is superior to other methods for garbage point status identification. Moreover, our network is trained to work with different scenarios of garbage deposits, demonstrating state-of-the-art performance in real-world tests.
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