6 research outputs found

    Accelerating Real-Time, High-Resolution Depth Upsampling on FPGAs

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    While the popularity of high-resolution, computer-vision applications (e.g. mixed reality, autonomous vehicles) is increasing, there have been complementary advances in time-of-flight (ToF) depth-sensor resolution and quality. These advances in ToF sensors provide a platform that can enable real-time, depth-upsampling algorithms targeted for high-resolution video systems with low-latency requirements. This thesis demonstrates that filter-based upsampling algorithms are feasible for real-time, low-power scenarios, such as those on HMDs. Specifically, the author profiled, parallelized, and accelerated a filter-based depth-upsampling algorithm on an FPGA using high-level synthesis tools from Xilinx. We show that our accelerated algorithm can accurately upsample the resolution and reduce the noise of ToF sensors. We also demonstrate that this algorithm exceeds the real-time requirements of 90 frames-per-second (FPS) and 11 ms latency of mixed-reality hardware, achieving a lower-bound speedup of 40 times over the fastest CPU-only version and a 4.7 times speedup over the original GPU implementation

    GSI Scientific Report 2008 [GSI Report 2009-1]

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