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A review of silhouette extraction algorithms for use within visual hull pipelines

机译:剪影提取算法综述,用于视觉船体管道

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Markerless motion capture would permit the study of human biomechanics in environments where marker-based systems are impractical, e.g. outdoors or underwater. The visual hull tool may enable such data to be recorded, but it requires the accurate detection of the silhouette of the object in multiple camera views. This paper reviews the top-performing algorithms available to date for silhouette extraction, with the visual hull in mind as the downstream application; the rationale is that higher-quality silhouettes would lead to higher-quality visual hulls, and consequently better measurement of movement. This paper is the first attempt in the literature to compare silhouette extraction algorithms that belong to different fields of Computer Vision, namely background subtraction, semantic segmentation, and multi-view segmentation. It was found that several algorithms exist that would be substantial improvements over the silhouette extraction algorithms traditionally used in visual hull pipelines. In particular, FgSegNet v2 (a background subtraction algorithm), DeepLabv3+ JFT (a semantic segmentation algorithm), and Djelouah 2013 (a multi-view segmentation algorithm) are the most accurate and promising methods for the extraction of silhouettes from 2D images to date, and could seamlessly be integrated within a visual hull pipeline for studies of human movement or biomechanics.
机译:无价值运动捕获将允许在基于标记的系统是不切实际的环境中研究人的生物力学,例如,户外或水下。 Visual Hull工具可以使得能够记录这些数据,但是需要在多个相机视图中准确地检测对象的轮廓。本文审查了剪影提取日期可用的顶级执行算法,视觉船体作为下游应用;理由是,更高质量的剪影会导致更高质量的视觉困境,从而更好地测量运动。本文是对文献中的第一次尝试比较属于计算机视野的不同领域的轮廓提取算法,即背景减法,语义分割和多视图分割。发现存在几种算法,这将在传统上用于视觉船体管道的轮廓提取算法的实质性改进。特别地,FGSegnet V2(背景减法算法),DEEPLABV3 + JFT(语义分割算法)和Djelouah 2013(多视图分割算法)是从2D图像提取剪影的最准确和有希望的方法,并且可以无缝地集成在视觉船体管道内,用于研究人类运动或生物力学。

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