TLCS-Anchor: a new anchor strategy for detecting small-scale unmanned aerial vehicle

T. Xiong, Jing Hu, Xinxin Lu, Kan Jiang, Xiangjun Li
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Abstract

Faster R-CNN is a general-purpose detection algorithm that performs well in most cases. However, Faster R-CNN performs poorly on detecting small-scale UAVs. In order to improve the detection performance for small-scale UAVs, a new anchor strategy (TLCS-Anchor) which could be adopted by Faster R-CNN is proposed in this paper. Firstly, the anchor templates are designed to be suitable for the UAV dataset by using the clustering method so that the aspect ratios and scales for anchors are more targeted to UAVs. Then, a new compensation strategy of anchors is proposed to help detect small-scale UAVs in this paper, which could not only improve the number of anchors matched with the UAVs, but also alleviate the problem that small-scale UAVs can’t match with enough anchors to some extent. Experimental results show that TLCS-Anchor can help improve the detection performance for UAVs, especially for small-scale UAVs. In theory, TLCS-Anchor can also be used to detect other small-scale targets.
tlcs -锚:一种小型无人机探测锚策略
更快的R-CNN是一种通用的检测算法,在大多数情况下都表现良好。然而,更快的R-CNN在检测小型无人机方面表现不佳。为了提高小型无人机的检测性能,本文提出了一种适用于Faster R-CNN的新型锚点策略TLCS-Anchor。首先,采用聚类方法设计适合无人机数据集的锚点模板,使锚点的长宽比和尺度更具有无人机的针对性;然后,本文提出了一种新的锚点补偿策略来帮助小型无人机检测,该策略不仅可以提高无人机匹配的锚点数量,还可以在一定程度上缓解小型无人机锚点匹配不足的问题。实验结果表明,TLCS-Anchor可以提高无人机的检测性能,特别是对小型无人机的检测性能。理论上,TLCS-Anchor也可以用于探测其他小尺度目标。
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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