一种提高大黄蜂探测精度的YOLOX先进结构的提出

Yeongjae Kwon, Cheolhee Lee
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引用次数: 0

摘要

本文提出了一种改进的YOLOX骨干结构,用ShuffleLayer代替CSPLayer,在黄蜂等小目标检测中获得更好的检测精度。通过这种替换,减少了主干网每层的卷积操作次数。这样可以在每一层和骨干层之间保存小目标的空间信息,减少处理时间。为了评估所提出的方法,我们进行了四种类型的实验,包括对我们的大黄蜂数据集的mAP比较,对标准数据集VEDAI专用小目标的mAP比较,RTMDet的泛化测试,以及默认YOLOX模型和所提出的YOLOX模型的检测速度。结果表明,在50% IoU条件下,hornet数据集的首个mAP值分别为默认值86.21%和建议值87.35%。实验中,mAP测试对标准VEDAI的准确率分别为47%和41.7%,准确率也提高了5.3%。在RTMDet泛化检验中,所提出的模型在IoU上具有相似或更高的精度。此外,在速度方面,由于减少了卷积参数,所提出的基于shufflelayer的骨干比默认的快1.35倍。因此,上述实验验证了所提出的YOLOX骨干结构可以有效地提高小目标实时检测的精度和推理速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proposal of an Advanced Structure of YOLOX for Hornet Detection Accuracy Improvement
In this paper, an advanced backbone structure for YOLOX is proposed to obtain better detection accuracy in small object detection such as hornet by replacing CSPLayer with ShuffleLayer. By this replacement, numbers of convolution operation are reduced in each layer of the backbone. This can conserve spatial information of small objects in each layer and through layers in backbone, reducing processing time. In order to evaluate the proposed method, four types of experiments were executed such as mAP comparison for our hornet dataset, another mAP comparison for the standard dataset VEDAI dedicated small objects, generalization test for RTMDet, and detection speed between the default YOLOX model and the proposed YOLOX model. As a result, the first mAP under 50% IoU condition for the hornet dataset showed 86.21% and 87.35% for the default and the proposed, respectively. The experiment, mAP test for the standard VEDAI, represented 47% and 41.7% for each model and also showed better accuracy by 5.3%. In the generalization test with RTMDet, the proposed model showed similar or higher accuracy according to IoU. In addition, in terms of speed the proposed ShuffleLayerbased backbone was faster than the default by 1.35 times due to reduced convolution parameters. Thus, experiments above verified that the proposed backbone structure for YOLOX can be effectively utilized to enhance accuracy and inference speed in real-time detection for small objects.
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