Title :
Real-time dense stereo for intelligent vehicles
Author :
Van der Mark, Wannes ; Gavrila, Dariu M.
Author_Institution :
Electro-Opt. Group, TNO Defence, The Hague
fDate :
3/1/2006 12:00:00 AM
Abstract :
Stereo vision is an attractive passive sensing technique for obtaining three-dimensional (3-D) measurements. Recent hardware advances have given rise to a new class of real-time dense disparity estimation algorithms. This paper examines their suitability for intelligent vehicle (IV) applications. In order to gain a better understanding of the performance and the computational-cost tradeoff, the authors created a framework of real-time implementations. This consists of different methodical components based on single instruction multiple data (SIMD) techniques. Furthermore, the resulting algorithmic variations are compared with other publicly available algorithms. The authors argue that existing publicly available stereo data sets are not very suitable for the IV domain. Therefore, the authors´ evaluation of stereo algorithms is based on novel realistically looking simulated data as well as real data from complex urban traffic scenes. In order to facilitate future benchmarks, all data used in this paper is made publicly available. The results from this study reveal that there is a considerable influence of scene conditions on the performance of all tested algorithms. Approaches that aim for (global) search optimization are more affected by this than other approaches. The best overall performance is achieved by the proposed multiple-window algorithm, which uses local matching and a left-right check for a robust error rejection. Timing results show that the simplest of the proposed SIMD variants are more than twice as fast than the most complex one. Nevertheless, the latter still achieves real-time processing speeds, while their average accuracy is at least equal to that of publicly available non-SIMD algorithms
Keywords :
road traffic; road vehicles; search problems; stereo image processing; global search optimization; intelligent vehicles; real-time dense stereo; single instruction multiple data technique; stereo vision; urban traffic; Hardware; Intelligent vehicles; Layout; Performance gain; Pixel; Real time systems; Road safety; Robustness; Stereo vision; Vehicle detection; Dense disparity; real time; single instruction multiple data (SIMD); stereo vision;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2006.869625