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An Improved Faster-RCNN Algorithm for Object Detection in Remote Sensing Images

机译:一种改进的Faster-RCNN遥感图像目标检测算法

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Compared with conventional object detection, remote sensing images are taken from the air. The angle of view is not fixed and the object direction, scale which compared with conventional object detection algorithm are quite different. These factors lead to the object detection in remote sensing images difficult. To solve the above problems, this paper proposes an improved remote sensing object detection method based on Faster-RCNN algorithm. Using online difficult example mining technology, feature pyramid structure, Soft-NMS technology, and RoI-Align technology to enhance the capabilities of Faster-RCNN in small object detection task in remote sensing images. The algorithm in this paper was evaluated on the RSOD-Dataset, compared with the original Faster-RCNN algorithm, the proposed algorithm improves the detection accuracy and training convergence speed, which shows that these improvements are of great significance to the object detection algorithm of remote sensing images.
机译:与传统的物体检测相比,遥感图像是从空中拍摄的。视角不是固定的,与传统的物体检测算法相比,物体的方向,比例有很大的不同。这些因素导致在遥感图像中物体检测困难。针对上述问题,提出了一种基于Faster-RCNN算法的改进的遥感目标检测方法。使用在线困难示例挖掘技术,特征金字塔结构,Soft-NMS技术和RoI-Align技术来增强Faster-RCNN在遥感图像中小物体检测任务中的功能。在RSOD-Dataset上对该算法进行了评估,与原始的Faster-RCNN算法相比,该算法提高了检测精度和训练收敛速度,说明这些改进对远程目标检测算法具有重要意义。感应图像。

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