Small object intelligent Detection method based on Adaptive Cascading Context

Jie zhang, Dailin Li, Hongyan Zhang, Fengxian Wang, Yiben Chen, Linwei Li
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Abstract

With the technology advances, deep learning-based object detection has made unprecedented progress. However, the small spatial ratio of object pixels affects the effective extraction of deep details features, resulting in poor detection results in small object detection. To improve the accuracy of small object detection, an adaptive Cascading Context small (ACC) object detection method is proposed based on YOLOv5. Firstly, a separate shallow layer feature was proposed to obtain more detailed information beneficial to small object detection. Secondly, an adaptive cascade method is proposed to fuse the output features of the three layers of the pyramid to adaptively filter negative semantic information, while fusing with shallow features to solve the problem of low classification accuracy caused by insufficient semantic information of shallow features. Finally, an adaptive context model is proposed to use a deformable convolution to obtain spatial context features of shallow small objects, associating the targets with the background, thereby improving the accuracy of small object detection. The experimental results show that the detection accuracy of the proposed method has been improved by 6.12%, 3.35%, 3.33%, and 5.2%, respectively, compared with the source code on the PASCAL VOC, NWPU VHR-10, KITTI, and RSOD datasets, which fully demonstrate the effectiveness of our method in small object detection.
基于自适应级联上下文的小物体智能检测方法
随着技术的进步,基于深度学习的物体检测取得了前所未有的进展。然而,由于物体像素的空间比例较小,影响了深度细节特征的有效提取,导致小物体检测效果不佳。为了提高小物体检测的精度,本文提出了一种基于 YOLOv5 的自适应级联上下文小(ACC)物体检测方法。首先,提出了一个单独的浅层特征,以获得更多有利于小物体检测的详细信息。其次,提出了一种自适应级联方法,将金字塔三层的输出特征进行融合,自适应地过滤负语义信息,同时与浅层特征进行融合,解决了浅层特征语义信息不足导致分类准确率低的问题。最后,提出了一种自适应上下文模型,利用可变形卷积来获取浅层小物体的空间上下文特征,将目标与背景关联起来,从而提高了小物体的检测精度。实验结果表明,在 PASCAL VOC、NWPU VHR-10、KITTI 和 RSOD 数据集上,与源代码相比,所提方法的检测精度分别提高了 6.12%、3.35%、3.33% 和 5.2%,充分证明了我们的方法在小目标检测方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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