ECascade-RCNN:用于无人机图像多尺度目标检测的增强级联RCNN

Qizhang Lin, Yan Ding, Hong Xu, Wenxiang Lin, Jiaxin Li, Xiaoxiao Xie
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引用次数: 8

摘要

由于无人机飞行高度和姿态的变化,无人机图像中的目标尺度存在差异,这给目标检测带来了很大的挑战,引起了广泛的关注。针对无人机图像目标检测任务中的多尺度问题,提出了一种改进的目标检测网络ECascade-RCNN。我们提出了一种创新的Trident-FPN主干来提取特征,并设计了一种新的注意力机制来提高检测器的性能。采用k-means算法生成锚点,使检测模型得到更好的回归精度。我们在Visdrone数据集上进行了多次烧蚀实验,结果表明本文提出的ECascade-R-CNN是有效的。ECascade-RCNN也用于Visdrone2020挑战,在目标检测轨道上排名第八。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ECascade-RCNN: Enhanced Cascade RCNN for Multi-scale Object Detection in UAV Images
Due to the change of flight altitude and attitude of UAV, the object scale in UAV images exists difference which leads to a great challenge for object detection and has drawn wide attention. In this paper, an improved object detection network named ECascade-RCNN is proposed to deal with the multi-scale problem in object detection task for UAV images. We present an innovative Trident-FPN backbone to extract features and design a new attention mechanism to enhance the performance of the detector. Moreover, k-means algorithm is adapted to generate anchors so that the detection model can get better regression accuracy. We evaluate the proposed ECascade-R-CNN on Visdrone dataset through several ablation experiments and the results show that the ECascade-RCNN given in the paper is effective. The ECascade-RCNN is also used in the Visdrone2020 challenge and ranked 8th on the object detection track.
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