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An Optimized Faster R-CNN Method Based on DRNet and RoI Align for Building Detection in Remote Sensing Images

机译:基于DRNET和ROI的优化R-CNN方法对齐遥感图像中的建筑物检测

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摘要

In recent years, the increase of satellites and UAV (unmanned aerial vehicles) has multiplied the amount of remote sensing data available to people, but only a small part of the remote sensing data has been properly used; problems such as land planning, disaster management and resource monitoring still need to be solved. Buildings in remote sensing images have obvious positioning characteristics; thus, the detection of buildings can not only help the mapping and automatic updating of geographic information systems but also have guiding significance for the detection of other types of ground objects in remote sensing images. Aiming at the deficiency of traditional building remote sensing detection, an improved Faster R-CNN (region-based Convolutional Neural Network) algorithm was proposed in this paper, which adopts DRNet (Dense Residual Network) and RoI (Region of Interest) Align to utilize texture information and to solve the region mismatch problems. The experimental results showed that this method could reach 82.1% mAP (mean average precision) for the detection of landmark buildings, and the prediction box of building coordinates was relatively accurate, which improves the building detection results. Moreover, the recognition of buildings in a complex environment was also excellent.
机译:近年来,卫星和无人机(无人驾驶飞行器)的增加乘以人们可用的遥感数据的量,但只使用了一小部分遥感数据;仍需要解决土地规划,灾害管理和资源监测等问题。遥感图像中的建筑物具有明显的定位特性;因此,建筑物的检测不仅可以帮助地理信息系统的映射和自动更新,而且还具有用于检测遥感图像中其他类型的地面对象的指导意义。针对传统建筑遥感检测的缺陷,本文提出了一种改进的R-CNN(基于区的卷积神经网络)算法,采用DRNET(密集的残余网络)和ROI(感兴趣的区域)对齐以便使用纹理信息和解决区域不匹配问题。实验结果表明,该方法可以达到82.1%的地图(平均平均精度)用于检测地标建筑物,建筑坐标的预测盒相对准确,这提高了建筑物检测结果。此外,复杂环境中建筑物的识别也是优秀的。

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