4.6 Article

A Vision Detection Scheme Based on Deep Learning in a Waste Plastics Sorting System

Journal

APPLIED SCIENCES-BASEL
Volume 13, Issue 7, Pages -

Publisher

MDPI
DOI: 10.3390/app13074634

Keywords

plastic sorting; vision detection; deep learning; object detection; multiple object tracking

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A plastic detection scheme based on deep learning is proposed in this paper for a waste plastics sorting system based on vision detection. The scheme improves the YOLOX object detection model and DeepSORT multiple object tracking algorithm, making them more suitable for plastic sorting.
The preliminary sorting of plastic products is a necessary step to improve the utilization of waste resources. To improve the quality and efficiency of sorting, a plastic detection scheme based on deep learning is proposed in this paper for a waste plastics sorting system based on vision detection. In this scheme, the YOLOX (You Only Look Once) object detection model and the DeepSORT (Deep Simple Online and Realtime Tracking) multiple object tracking algorithm are improved and combined to make them more suitable for plastic sorting. For plastic detection, multiple data augmentations are combined to improve the detection effect, while BN (Batch Normalization) layer fusion and mixed precision inference are adopted to accelerate the model. For plastic tracking, the improved YOLOX is used as a detector, and the tracking effect is further improved by optimizing the deep cosine metric learning and the metric in the matching stage. Based on this, virtual detection lines are set up to filter and extract information to determine the sorted objects. The experimental results show that the scheme proposed in this paper makes full use of vision information to achieve dynamic and real-time detection of plastics. The system is effective and versatile for sorting complex objects.

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