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A FOREGROUND OBJECT BASED QUANTITATIVE ASSESSMENT OF DENSE STEREO APPROACHES FOR USE IN AUTOMOTIVE ENVIRONMENTS

机译:基于前景对象的致密态度方法的定量评估,用于汽车环境中的使用方法

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There has been significant recent interest in stereo correspondence algorithms for use in the urban automotive environment [1, 2, 3]. In this paper we evaluate a range of dense stereo algorithms, using a unique evaluation criterion which provides quantitative analysis of accuracy against range, based on ground truth 3D annotated object information. The results show that while some algorithms provide greater scene coverage, we see little differentiation in accuracy over short ranges, while the converse is shown over longer ranges. Within our long range accuracy analysis we see a distinct separation of relative algorithm performance. This study extends prior work on dense stereo evaluation of Block Matching (BM)[4], Semi-Global Block Matching (SGBM)[5], No Maximal Disparity (NoMD)[6], Cross[7], Adaptive Dynamic Programming (AdptDP)[8], Efficient Large Scale (ELAS)[9], Minimum Spanning Forest (MSF)[10] and Non-Local Aggregation (NLA)[11] using a novel quantitative metric relative to object range.
机译:最近近来的立体对应算法兴趣,用于城市汽车环境[1,2,3]。在本文中,我们使用独特的评估标准评估一系列密集的立体声算法,该算法提供了对范围的准确性的定量分析,基于地面真相3D注释对象信息。结果表明,虽然某些算法提供了更大的场景覆盖,但我们在短程范围内比较差异很小,而交谈会显示在更长的范围内。在我们的远程精度分析中,我们看到相对算法性能的不同分离。本研究延伸了对块匹配(BM)的密度立体声评估的先前工作[4],半全局块匹配(SGBM)[5],没有最大视差(NOMD)[6],交叉[7],自适应动态编程( ADPTDP)[8],使用相对于物体范围的新颖定量度量,高效的大规模(ELAS)[9],最小跨度森林(MSF)[10]和非局部聚集(NLA)[11]。

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