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Pattern Compression of FAST Corner Detection for Efficient Hardware Implementation

机译:FAST角点检测的模式压缩,可实现高效的硬件

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This paper shows stream-oriented FPGA implementation of the machine-learned Features from Accelerated Segment Test (FAST) corner detection, which is used in the parallel tracking and mapping (PTAM) for augmented reality (AR). One of the difficulties of compact hardware implementation of the FAST corner detection is a matching process with a large number of corner patterns. We propose corner pattern compression methods focusing on discriminant division and pattern symmetry for rotation and inversion. This pattern compression enables implementation of the corner pattern matching with a combinational circuit. Our prototype implementation achieves real-time execution performance with 7-9% of available slices of a Virtex-5 FPGA.
机译:本文展示了来自加速段测试(FAST)角点检测的机器学习功能的面向流的FPGA实现,该功能用于增强现实(AR)的并行跟踪和映射(PTAM)。 FAST拐角检测的紧凑硬件实现的困难之一是具有大量拐角图案的匹配过程。我们提出了针对旋转和反转的判别式和图案对称性的角模式压缩方法。该图案压缩使得能够实现与组合电路匹配的拐角图案。我们的原型实现通过Virtex-5 FPGA可用片的7-9%实现了实时执行性能。

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