Fully in tensor computation manner: one-shot dense 3D structured light and beyond

IF 1.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Cognitive Computation and Systems Pub Date : 2020-12-03 DOI:10.1049/ccs.2019.0027
Xuan-Li Chen, Luc Van Gool
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Abstract

Tensor computation evolves fast towards a prosperous existence in recent years, e.g. PyTorch. An immediate advantage of using tensor computation is that one does not need to implement low-level parallelism to attain efficient computation, which is of simplicity for both research and application development. The authors began with discovering that a simple manoeuvre ‘tensor shift’ could perform neighbourhood manipulation in very efficient parallel manner. Based on ‘tensor shift’, they derive the tensor version of a renowned correspondence search algorithm: semi-global matching (SGM), which they prefix the name as tensor-SGM. To evaluate their idea, they build-up a novel and practical one-shot structured light 3D acquisition system, which yields state-of-art reconstruction results using off-the-shelf hardware. This is the first fully tensorised 3D reconstruction system published to the authors’ best knowledge, and it opens new possibilities. A major one is, in the same tensorised framework, they solved the pattern interfering problem which hinders multi-structured light systems from working together. This part is marked as ‘beyond’ in this study to avoid confusing the readers the spotlight: the fully tensorised 3D structured light framework.

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全张量计算方式:一次密集三维结构光及以上
近年来,张量计算发展迅速,走向繁荣,例如PyTorch。使用张量计算的一个直接优势是不需要实现低级并行来获得高效的计算,这对于研究和应用程序开发都很简单。作者首先发现一个简单的操作“张量移位”可以以非常有效的并行方式执行邻域操作。基于“张量位移”,他们导出了一种著名的对应搜索算法的张量版本:半全局匹配(SGM),他们将其命名为张量-SGM。为了评估他们的想法,他们建立了一个新颖实用的一次性结构光3D采集系统,该系统使用现成的硬件产生最先进的重建结果。这是作者所知的第一个完全张紧的3D重建系统,它开辟了新的可能性。主要的一点是,在相同的张拉框架中,他们解决了阻碍多结构光系统协同工作的模式干扰问题。这部分在本研究中被标记为“超越”,以避免读者对聚光灯感到困惑:完全张紧的3D结构光框架。
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来源期刊
Cognitive Computation and Systems
Cognitive Computation and Systems Computer Science-Computer Science Applications
CiteScore
2.50
自引率
0.00%
发文量
39
审稿时长
10 weeks
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