Computational Stereo 论文

1982ACM Computing Surveys引用 711
Advanced Vision and ImagingRobotics and Sensor-Based LocalizationAdvanced Image and Video Retrieval Techniques

摘要

Perception of depth is a central problem in machine vision. Stereo is an attractive technique for depth perception because compared to monocular techniques, it leads to more direct, unambiguous, and quantitative depth measurements. Also, unlike such active approaches as radar and laser ranging, it is suitable in almost all application domains. The authors broadly define computational stereo as the recovery of the three-dimensional characteristics of a scene from multiple images taken from different points of view. The first part of the paper identifies and discusses each of the functional components of the computational stereo paradigm: image acquisition, camera modeling, feature acquisition, matching, depth determination, and interpolation. The second part discusses the criteria that are important for evaluating the effectiveness of various computational stereo techniques. The third part surveys a representative sampling of computational stereo research that is being conducted by Carnegie-Mellon University, Control Data Corporation, Lockheed Corporation, University of Minnesota, Massachusetts Institute of Technology (MIT), SRI International, and Stanford University.