Lemon-YOLO: An efficient object detection method for lemons in the natural environment

Guojin Li, Xiaojie Huang, Jiaoyan Ai, Zeren Yi, Wei Xie
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引用次数: 19

Abstract

Efficient Intelligent detection is a key technology in automatic harvesting robots. How-ever, citrus detection is still a challenging task because of varying illumination, random occlusion and colour similarity between fruits and leaves in natural conditions. In this paper, a detection method called Lemon-YOLO (L-YOLO) is proposed to improve the accuracy and real-time performance of lemon detection in the natural environment. The SE_ResGNet34 network is designed to replace DarkNet53 network in YOLOv3 algorithm as a new backbone of feature extraction. It can enhance the propagation of features, and needs less parameter, which helps to achieve higher accuracy and speed. Moreover, the SE_ResNet module is added to the detection block, to improve the quality of representa-tions produced from the network by strengthening the convolutional features of channels. The experimental results show that the proposed L-YOLO has an average accuracy(AP) of 96.28% and a detection speed of 106 frames per second (FPS) on the lemon test set, which is 5.68% and 28 FPS higher than the YOLOv3, respectively. The results indicate that the L-YOLO method has superior detection performance. It can recognize and locate lemons in the natural environment more efficiently, providing technical support for the machine’s picking lemon and other fruits.
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柠檬- yolo:一种针对自然环境中柠檬的高效目标检测方法
高效智能检测是自动采收机器人的关键技术。然而,柑橘的检测仍然是一项具有挑战性的任务,因为在自然条件下,水果和叶子之间存在不同的光照、随机遮挡和颜色相似性。为了提高自然环境中柠檬检测的准确性和实时性,本文提出了一种柠檬- yolo (L-YOLO)检测方法。SE_ResGNet34网络旨在取代YOLOv3算法中的DarkNet53网络,成为新的特征提取骨干。它可以增强特征的传播,并且需要较少的参数,有助于达到更高的精度和速度。此外,在检测块中增加了SE_ResNet模块,通过增强通道的卷积特征来提高网络产生的表示的质量。实验结果表明,本文提出的L-YOLO在柠檬测试集上的平均准确率(AP)为96.28%,检测速度为106帧/秒(FPS),分别比YOLOv3高5.68%和28 FPS。结果表明,L-YOLO方法具有较好的检测性能。它可以更高效地识别和定位自然环境中的柠檬,为机器采摘柠檬等水果提供技术支持。
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