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Segmentation of urban traffic scene based on 3D structure

机译:基于3D结构的城市交通场景分割

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This paper proposes an approach for image segmentation of the urban traffic scene captured from a car-mounted camera. First of all, an improved SIFT feature matching algorithm is adopted for extracting 2D keypoints of the scene. Tracking the 2D keypoints generates the 3D points clouds that can estimate the 3D world structure and motion features. And then Multiple Kernels Support Vector Machines (MKSVM) is employed for sematic segmentation based on motion-derived 3D structure and SIFT features. Experiments show the efficiency and the relevancy of our approach.
机译:本文提出了一种从车载相机捕获的城市交通场景的图像分割方法。首先,采用改进的SIFT特征匹配算法来提取场景的2D关键点。跟踪2D关键点生成可以估计3D世界结构和运动功能的3D点云。然后,多个内核支持向量机(MKSVM)用于基于运动衍生的3D结构和SIFT特征来进行半分割。实验表明了我们方法的效率和相关性。

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