Small Object Recognition Algorithm Based on Hybrid Control and Feature Fusion

IF 2.3 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Gaofeng Zhu;Zhixue Wang;Fenghua Zhu;Gang Xiong;Zheng Li
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引用次数: 0

Abstract

Drone detection plays a key role in various fields, but from the perspective of drones, factors such as the size of the target, interference from different backgrounds, and lighting affect the detection effect, which can easily lead to missed detections and false detections. To address this problem, this paper proposes a small target detection algorithm. First, the hybrid control of attention mechanism and a convolutional module (HCAC) are used to effectively extract contextual details of targets of different scales, directions, and shapes, while relative position encoding is used to associate targets with position information. Secondly, in view of the small size characteristics of small targets, a high-resolution detection branch is introduced, the large target detection head and its redundant network layers are pruned, and a multi-level weighted feature fusion network (MWFN) is used for multi-dimensional fusion. Finally, the WIoU loss is used as a bounding box regression loss, combined with a dynamic non-monotonic focusing mechanism, to evaluate the quality of anchor boxes so that the detector can handle anchor boxes of different qualities, thus improving the overall performance. Experiments were conducted on the UAV aerial photography data set VisDrone2019. The results showed that the accuracy of P increased by 9.0% and MAP by 9.8%, with higher detection results.
基于混合控制和特征融合的小物体识别算法
无人机检测在各个领域发挥着关键作用,但从无人机的角度来看,目标大小、不同背景的干扰、光照等因素都会影响检测效果,容易导致漏检和误检。针对这一问题,本文提出了一种小目标检测算法。首先,利用注意力混合控制机制和卷积模块(HCAC)有效提取不同尺度、方向和形状目标的上下文细节,同时利用相对位置编码将目标与位置信息关联起来。其次,针对小目标尺寸小的特点,引入了高分辨率检测分支,剪切了大目标检测头及其冗余网络层,并使用多级加权特征融合网络(MWFN)进行多维融合。最后,使用 WIoU 损失作为边界框回归损失,并结合动态非单调聚焦机制来评估锚点框的质量,使检测器可以处理不同质量的锚点框,从而提高整体性能。实验在无人机航拍数据集 VisDrone2019 上进行。结果表明,P 的准确度提高了 9.0%,MAP 提高了 9.8%,检测结果更高。
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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来源期刊
CiteScore
5.70
自引率
0.00%
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