Garbage Classification and Detection Based on Improved YOLOv7 Network

Gengchen Yu, Birui Shao
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引用次数: 1

Abstract

With the improvement of people’s living standards, garbage classification is gradually forced. However, due to people’s awareness and knowledge, the classification accuracy and disposal of garbage are difficult to keep pace with guideline changes. With the consideration of the problems of low efficiency, heavy task and poor environment of garbage manual classification, an improved YOLOv7 target detection method is proposed to realize the effective classification of garbage. In this study, the recursive gated convolutional gnconv was used to establish the HorNet network architecture, and the model was trained by making specific data sets. The C3HB module is added to the YOLO model, and the pooling layer is optimized to replace SPPFCSPC to improve the detection accuracy of the target. The experimental results show that the garbage detection and classification method proposed in this study has excellent accuracy. Experiments show that the map value, accuracy and recall rate of the proposed model on garbage datasets are 99.25%, 99.33% and 98.03%, respectively, which are 1.50%, 3.99% and 1.41% higher than those of YOLOv7. The overall results are better than the original model.
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基于改进YOLOv7网络的垃圾分类与检测
随着人们生活水平的提高,垃圾分类逐渐被强制。然而,由于人们的意识和知识,垃圾的分类精度和处理很难跟上指南的变化。针对垃圾人工分类效率低、任务重、环境差的问题,提出一种改进的YOLOv7目标检测方法,实现垃圾的有效分类。本研究采用递归门控卷积gnconv建立HorNet网络架构,并通过制作特定数据集对模型进行训练。在YOLO模型中加入C3HB模块,优化池化层取代SPPFCSPC,提高目标检测精度。实验结果表明,本文提出的垃圾检测分类方法具有良好的准确率。实验表明,该模型在垃圾数据集上的地图值、准确率和召回率分别为99.25%、99.33%和98.03%,分别比YOLOv7提高了1.50%、3.99%和1.41%。总体结果优于原模型。
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