用Ppyolo-Banana进行单香蕉外观分级

IF 0.8 4区 农林科学 Q4 AGRICULTURAL ENGINEERING
DianHui Mao, DengHui Zhang, XueSen Wang, DongDong Lv, JianWei Wu, JunHua Chen
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引用次数: 0

摘要

提出了一种利用目标检测算法对香蕉外观进行分级的检测方法——通过计算不同缺陷区域的数量和面积比作为判别标准。Mish激活函数使网络更容易优化,提高了泛化性能。CustomPAN增加了一个关注机制,优化了更好的多特征融合。DIoULoss回归任务中损失函数的优化。摘要随着水果单件包装行业的发展,对单件包装水果的外观质量提出了更高的要求。由于香蕉表面缺陷密集且不均匀,现有的检测算法容易出现无法识别或识别精度下降的问题。本文提出了一种高效的香蕉表面缺陷检测模型——PPYOLO-Banana模型。ppyoloo - banana是基于改进了模型结构和损失函数的PPYOLOE+-m模型,优化后的CustomPAN可以获得更多的多层次特征,并且与原始网络PPYOLOE+-m模型相比,该算法的准确率显著提高,平均准确率提高2.2%(原始图像测试集提高1.3%)。ppyoloo - banana的mAP值为97.0%(原始图像测试集为96.1%),比PPYOLOE模型高14.3%,比YOLOX、YOLOX-tiny、YOLOv5和YOLOV4模型分别高10.9%、8.9%、8.9%和8.1%。PPYOLO-Banana模型的检测速度为17.71帧/秒,分别是YOLOv3、YOLOv4、YOLOX和YOLOX-tiny的2.95倍、2.10倍、1.90倍和0.98倍。结果表明,所提出的PPYOLO-Banana模型在识别香蕉表面缺陷方面达到了准确性和速度的平衡,提高了单件包装水果的质量检测能力,能够有效地对香蕉外观质量进行分级,具有成为智能分拣机的良好潜力。关键词:香蕉缺陷识别,香蕉外观分级,CustomPAN, DIoULoss, PPYOLOE+。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single Banana Appearance Grading with Ppyolo-Banana
Highlights An inspection method for grading the appearance of bananas using a target detection algorithm is proposed—by calculating the number and area ratio of different defective areas as a discriminating criterion. The Mish activation function makes the network easier to optimize and improves generalization performance. CustomPAN adds an attention mechanism, optimized for better multi-feature fusion. Optimized loss function in regression task with DIoULoss. Abstract. With the development of the fruit individual packaging industry, the appearance quality of individually packaged fruits has put forward higher requirements. Due to the dense and uneven defects on the surface of bananas, the existing detection algorithms are prone to the problem of unrecognizable or degraded recognition accuracy. In this article, we propose an efficient banana surface defect detection model, the PPYOLO-Banana model. PPYOLO-Banana is based on the PPYOLOE+-m model with improved model structure and loss function, and the optimized CustomPAN can get more multi-level features, and compared with the original network PPYOLOE+-m model, the algorithm significantly improves the accuracy, with an average accuracy improvement of 2.2% (1.3% for the original image test set). mAP of PPYOLO-Banana is 97.0% (96.1% for the original image test set), which is 14.3% higher than the PPYOLOE model, and 10.9%, 8.9%, 8.9%, and 8.1% higher than the YOLOX, YOLOX-tiny, YOLOv5, and YOLOV4 models, respectively. The detection speed of the PPYOLO-Banana model is 17.71 frames per second, which is 2.95, 2.10, 1.90, and 0.98 times higher than that of YOLOv3, YOLOv4, YOLOX, and YOLOX-tiny, respectively. The results show that the proposed PPYOLO-Banana model achieves a balance between accuracy and speed in recognizing banana surface defects, improves the quality detection capability of individually packed fruits, it can effectively grade the quality of banana appearance, and has good potential to become an intelligent sorting machine. Keywords: Banana defect recognition, Banana appearance grading, CustomPAN, DIoULoss, PPYOLOE+.
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来源期刊
Applied Engineering in Agriculture
Applied Engineering in Agriculture 农林科学-农业工程
CiteScore
1.80
自引率
11.10%
发文量
69
审稿时长
6 months
期刊介绍: This peer-reviewed journal publishes applications of engineering and technology research that address agricultural, food, and biological systems problems. Submissions must include results of practical experiences, tests, or trials presented in a manner and style that will allow easy adaptation by others; results of reviews or studies of installations or applications with substantially new or significant information not readily available in other refereed publications; or a description of successful methods of techniques of education, outreach, or technology transfer.
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