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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >OBJECT DETECTION FROM MMS IMAGERY USING DEEP LEARNING FOR GENERATION OF ROAD ORTHOPHOTOS
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OBJECT DETECTION FROM MMS IMAGERY USING DEEP LEARNING FOR GENERATION OF ROAD ORTHOPHOTOS

机译:使用深度学习生成道路矫正器从MMS影像中进行对象检测

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In recent years, extensive research has been conducted to automatically generate high-accuracy and high-precision road orthophotos using images and laser point cloud data acquired from a mobile mapping system (MMS). However, it is necessary to mask out non-road objects such as vehicles, bicycles, pedestrians and their shadows in MMS images in order to eliminate erroneous textures from the road orthophoto. Hence, we proposed a novel vehicle and its shadow detection model based on Faster R-CNN for automatically and accurately detecting the regions of vehicles and their shadows from MMS images. The experimental results show that the maximum recall of the proposed model was high – 0.963 (intersection-over-union ?0.7) – and the model could identify the regions of vehicles and their shadows accurately and robustly from MMS images, even when they contain varied vehicles, different shadow directions, and partial occlusions. Furthermore, it was confirmed that the quality of road orthophoto generated using vehicle and its shadow masks was significantly improved as compared to those generated using no masks or using vehicle masks only.
机译:近年来,已经进行了广泛的研究,以使用从移动地图系统(MMS)获取的图像和激光点云数据自动生成高精度和高精度的道路正射影像。但是,必须掩盖MMS图像中的非道路物体,例如车辆,自行车,行人及其阴影,以消除正射影像中的错误纹理。因此,我们提出了一种新颖的车辆及其基于Faster R-CNN的阴影检测模型,用于从MMS图像中自动准确地检测车辆的区域及其阴影。实验结果表明,所提模型的最大召回率很高,为0.963(交会-交会>?0.7),并且该模型可以从MMS图像中准确,可靠地识别车辆区域及其阴影,即使它们包含各种各样的车辆,不同的阴影方向和部分遮挡。此外,已经证实,与不使用掩模或仅使用车辆掩模产生的道路正射影像相比,使用车辆及其阴影掩模产生的道路正射影像的质量显着提高。

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