Area Efficient Box Filter Acceleration by Parallelizing with Optimized Adder Tree

Xinzhe Liu, Fupeng Chen, Y. Ha
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引用次数: 1

Abstract

Box filters are widely used in image and video processing applications. To achieve the real-time performance for these applications, designers may need to parallelize these box filters. However, it is very challenging to implement a parallel box filter on modern programmable system-on-chip (SoC). On one hand, the dependency between the operations of a box filter is too strong to achieve parallelism. On the other hand, more adder trees are required as the degree of parallelism increases. In this paper, we propose a performance and area efficient boxfilter. It uses the partial sum difference, which needs much less resources, to effectively calculate the box filter. We make the full use of this reusable partial sum to optimize the adder trees for parallel processing. We also make two case studies of the box filter by applying it to the guided filter and the stereo matching algorithm on a programmable SoC using a C-based design flow. Our method removes the dependencies between the parallel operations of the box filter. Compare to the state-of-the-art, results show that the computational complexity of the adder tree for a single pixel has been reduced from O(R^2) to O((R+N)lgN/N ) on average. There are orders of magnitude reduction in resource usage with large filter size R and parallelization degree N. The throughput can be increased by N times, where N is up to 72 in the case of Xilinx FPGA board XCZU9EG.
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基于优化加法器树并行化的区域高效箱形滤波器加速
盒滤波器广泛应用于图像和视频处理。为了实现这些应用程序的实时性能,设计人员可能需要并行化这些盒滤波器。然而,在现代可编程片上系统(SoC)上实现并行盒滤波器是非常具有挑战性的。一方面,盒子过滤器的操作之间的依赖性太强,无法实现并行性。另一方面,随着并行度的增加,需要更多的加法树。在本文中,我们提出了一种性能和面积有效的盒子滤波器。该算法利用部分和差分法有效地计算盒形滤波器,节省了大量的资源。我们充分利用这种可重用的部分和来优化并行处理的加法器树。我们还通过使用基于c的设计流程将盒滤波器应用于可编程SoC上的引导滤波器和立体匹配算法,进行了两个案例研究。我们的方法消除了框过滤器并行操作之间的依赖关系。与最先进的技术相比,结果表明,单个像素的加法器树的计算复杂度从平均O(R^2)降低到O((R+N)lgN/N)。滤波器尺寸R大,并行度N大,资源使用量降低了几个数量级。吞吐量可提高N倍,其中Xilinx FPGA板XCZU9EG的吞吐量最高可达72倍。
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