Tensor Voting Fields: Direct Votes Computation and New Saliency Functions

P. Campadelli, G. Lombardi
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引用次数: 3

Abstract

The tensor voting framework (TVF), proposed by Medioni at at, has proved its effectiveness in perceptual grouping of arbitrary dimensional data. In the computer vision and image processing fields, this algorithm has been applied to solve various problems like stereo-matching, 3D reconstruction, and image in painting. The TVF technique can detect and remove a big percentage of outliers, but unfortunately it does not generate satisfactory results when the data are corrupted by additive noise. In this paper a new direct votes computation algorithm for high dimensional spaces is described, and a parametric class of decay functions is proposed to deal with noisy data. Preliminary comparative results between the original TVF and our algorithm are shown on synthetic data.
张量投票域:直接投票计算和新的显著性函数
Medioni在2008年提出的张量投票框架(TVF)在任意维度数据的感知分组中已经证明了它的有效性。在计算机视觉和图像处理领域,该算法已被应用于解决立体匹配、三维重建、绘画中的图像等各种问题。TVF技术可以检测和去除很大比例的异常值,但不幸的是,当数据被加性噪声破坏时,它不能产生令人满意的结果。本文提出了一种新的高维空间直接投票计算算法,并提出了一类参数化的衰减函数来处理噪声数据。在合成数据上给出了原始TVF和算法的初步对比结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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