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FPGA based disparity map computation with vergence control
Authors:Christos Georgoulas  Ioannis Andreadis
Affiliation:1. Center for Environmental Resource Management, University of Texas at El Paso, 500 W. University Ave., El Paso, TX 79968, USA;2. School of Nursing, University of Texas at El Paso, 500 W. University Ave., EL Paso, TX 79968, USA;3. Hispanic Health Disparities Research Center, University of Texas at El Paso, 500 W. University Ave., EL Paso, TX 79968, USA;4. Department of Civil Engineering, University of Texas at El Paso, 500 W. University Ave., El Paso, TX 79968, USA;1. ASELSAN Inc., Turkey;2. Electrical and Electronics Department, Middle East Technical University, Turkey
Abstract:Depth estimation in a scene using image pairs acquired by a stereo camera setup, is one of the important tasks of stereo vision systems. The disparity between the stereo images allows for 3D information acquisition which is indispensable in many machine vision applications. Practical stereo vision systems involve wide ranges of disparity levels. Considering that disparity map extraction of an image is a computationally demanding task, practical real-time FPGA based algorithms require increased device utilization resource usage, depending on the disparity levels operational range, which leads to significant power consumption. In this paper a new hardware-efficient real-time disparity map computation module is developed. The module constantly estimates the precisely required range of disparity levels upon a given stereo image set, maintaining this range as low as possible by verging the stereo setup cameras axes. This enables a parallel-pipelined design, for the overall module, realized on a single FPGA device of the Altera Stratix IV family. Accurate disparity maps are computed at a rate of more than 320 frames per second, for a stereo image pair of 640 × 480 pixels spatial resolution with a disparity range of 80 pixels. The presented technique provides very good processing speed at the expense of accuracy, with very good scalability in terms of disparity levels. The proposed method enables a suitable module delivering high performance in real-time stereo vision applications, where space and power are significant concerns.
Keywords:
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