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Hardware-Efficient Design of Real-Time Profile Shape Matching Stereo Vision Algorithm on FPGA

机译:FPGA上实时轮廓形状匹配立体视觉算法的硬件高效设计

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A variety of platforms, such as micro-unmanned vehicles, are limited in the amount of computational hardware they can support due to weight and power constraints. An efficient stereo vision algorithm implemented on an FPGA would be able to minimize payload and power consumption in microunmanned vehicles, while providing 3D information and still leaving computational resources available for other processing tasks. This work presents a hardware design of the efficient profile shape matching stereo vision algorithm. Hardware resource usage is presented for the targeted micro-UV platform, Helio-copter, that uses the Xilinx Virtex 4 FX60 FPGA. Less than a fifth of the resources on this FGPA were used to produce dense disparity maps for image sizes up to 450 × 375, with the ability to scale up easily by increasing BRAM usage. A comparison is given of accuracy, speed performance, and resource usage of a census transform-based stereo vision FPGA implementation by Jin et al. Results show that the profile shape matching algorithm is an efficient real-time stereo vision algorithm for hardware implementation for resource limited systems such as microunmanned vehicles.
机译:由于重量和功率的限制,各种平台(例如微型无人驾驶汽车)在其可支持的计算硬件数量上受到限制。在FPGA上实现的高效立体视觉算法将能够最大程度地减少微型无人驾驶车辆的有效载荷和功耗,同时提供3D信息,并且仍可将计算资源用于其他处理任务。这项工作提出了有效的轮廓形状匹配立体视觉算法的硬件设计。针对使用Xilinx Virtex 4 FX60 FPGA的目标微型UV平台Helio-copter,提供了硬件资源使用情况。该FGPA上不到五分之一的资源用于生成图像尺寸高达450×375的密集视差图,并具有通过增加BRAM使用率轻松扩展的能力。 Jin等人对基于人口普查变换的立体视觉FPGA实现的准确性,速度性能和资源使用情况进行了比较。结果表明,轮廓形状匹配算法是一种有效的实时立体视觉算法,适用于资源有限的系统(如微型无人机)的硬件实现。

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