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Real-time detection method of surface floating objects based on deep learning

机译:基于深度学习的表面浮动物体实时检测方法

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In order to solve the problem that the surface floating object needs manual inspection and time-consuming and labor-intensive problems, and the information of single monitoring means is not comprehensive, this paper proposes a set of integrated monitoring and detection system, which can monitor the video image information in various scenarios. Automatically alert and dispose of. Based on the video surveillance-based surface floating object detection algorithm, the darknet framework is used to establish a deep learning network, and the improved YOLOv3 detection algorithm is designed to solve the problem that the garbage floating on the fast flowing water surface and the algae and other pollutants cannot be quickly identified.
机译:为了解决表面浮动物体需要手动检查和耗时和劳动密集型问题的问题,以及单一监测手段的信息并不全面,本文提出了一套集成监控和检测系统,可以监控各种场景中的视频图像信息。自动警告和处理。基于基于视频监控的表面浮动物体检测算法,Darknet框架用于建立深度学习网络,而改进的yolov3检测算法旨在解决垃圾在快速流动水面和藻类上的问题和其他污染物无法快速识别。

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