A Comparative Analysis of Depth-Discontinuity and Mixed-Pixel Detection Algorithms

P. Tang, Daniel F. Huber, B. Akinci
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引用次数: 60

Abstract

Laser scanner measurements are corrupted by noise and artifacts that can undermine the performance of registration, segmentation, surface reconstruction, recognition, and other algorithms operating on the data. While much research has addressed laser scanner noise models, comparatively little is known about other artifacts, such as the mixed pixel effect, color-dependent range biases, and specular reflection effects. This paper focuses on the mixed pixel effect and the related challenge of detecting depth discontinuities in 3D data. While a number of algorithms have been proposed for detecting mixed pixels and depth discontinuities, there is no consensus on how well such algorithms perform or which algorithm performs best. This paper presents a comparative analysis of five mixed-pixel/discontinuity detection algorithms on real data sets. We find that an algorithm based on the surface normal angle has the best overall performance, but that no algorithm performs exceptionally well. Factors influencing algorithm performance are also discussed.
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深度不连续与混合像素检测算法的比较分析
激光扫描仪的测量结果会受到噪声和伪影的干扰,这些干扰会破坏对数据进行配准、分割、表面重建、识别和其他算法的性能。虽然许多研究已经解决了激光扫描仪噪声模型,但相对而言,对其他工件知之甚少,例如混合像素效应,颜色相关范围偏差和镜面反射效应。本文主要研究了三维数据中深度不连续性检测的混合像元效应及其挑战。虽然已经提出了许多用于检测混合像素和深度不连续的算法,但对于这些算法的性能如何或哪种算法性能最好尚无共识。本文在实际数据集上对五种混合像素/不连续检测算法进行了比较分析。我们发现基于表面法线角度的算法总体性能最好,但没有一种算法表现得特别好。讨论了影响算法性能的因素。
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