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首页> 外文期刊>Intelligent Transportation Systems, IEEE Transactions on >Moving-Object Detection From Consecutive Stereo Pairs Using Slanted Plane Smoothing
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Moving-Object Detection From Consecutive Stereo Pairs Using Slanted Plane Smoothing

机译:使用倾斜平面平滑从连续立体对中检测运动对象

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摘要

Detecting moving objects is of great importance for autonomous unmanned vehicle systems, and a challenging task especially in complex dynamic environments. This paper proposes a novel approach for the detection of moving objects and the estimation of their motion states using consecutive stereo image pairs on mobile platforms. First, we use a variant of the semi-global matching algorithm to compute initial disparity maps. Second, assisted by the initial disparities, boundaries in the image segmentation produced by simple linear iterative clustering are classified into coplanar, hinge, and occlusion. Moving points are obtained during ego-motion estimation by a modified random sample consensus) algorithm without resorting to time-consuming dense optical flow. Finally, the moving objects are extracted by merging superpixels according to the boundary types and their movements. The proposed method is accelerated on the GPU at 20 frames per second. The data which we use for testing and benchmarking is released, thus completing similar data sets. It includes 812 image pairs and 924 moving objects with ground truth for better algorithms evaluation. Experimental results demonstrate that the proposed method achieves competitive results in terms of moving-object detection and their motion state estimation in challenging urban scenarios.
机译:对于自动无人驾驶汽车系统来说,检测运动物体非常重要,这是一项艰巨的任务,尤其是在复杂的动态环境中。本文提出了一种新颖的方法,用于在移动平台上使用连续的立体图像对检测运动对象并估计其运动状态。首先,我们使用半全局匹配算法的一种变体来计算初始视差图。其次,在初始视差的辅助下,由简单的线性迭代聚类产生的图像分割中的边界分为共面,铰链和遮挡。运动点是在自我运动估计期间通过改进的随机样本一致性算法获得的,而无需借助耗时的密集光流。最后,根据边界类型及其运动,通过合并超像素来提取运动对象。所提出的方法以每秒20帧的速度在GPU上加速。我们用于测试和基准测试的数据已发布,从而完成了类似的数据集。它包括812个图像对和924个具有地面真实性的运动对象,以实现更好的算法评估。实验结果表明,该方法在具有挑战性的城市场景中,在运动物体检测和运动状态估计方面均取得了竞争性结果。

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