Novel Hardware Algorithms for Row-Parallel Integral Image Calculation

Shoaib Ehsan, A. Clark, K. Mcdonald-Maier
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引用次数: 10

Abstract

The integral image is an intermediate image representation that allows rapid calculation of rectangular features at constant speed, irrespective of filter size, and is particularly useful for multi-scale computer vision algorithms like Speeded-Up Robust Features (SURF). Although calculation of the integral image involves simple addition operations, the total number of operations is significant due to the generally large size of image data. Recursive equations allow considerable reduction in the required number of addition operations but require calculation of the integral image in a serial fashion. This is generally not desirable for real-time embedded vision systems with strict time limitations and low-powered but parallel hardware resources. With the objective of minimizing the hardware resources involved, this paper proposes two novel hardware algorithms based on decomposition of these recursive equations, allowing calculation of up to four integral image values in a row-parallel way with out significantly increasing the number of addition operations.
行并行积分图像计算的新硬件算法
积分图像是一种中间图像表示,允许以恒定速度快速计算矩形特征,而不考虑滤波器大小,并且对于多尺度计算机视觉算法(如加速鲁棒特征(SURF))特别有用。虽然积分图像的计算涉及简单的加法运算,但由于图像数据通常较大,因此运算的总数非常大。递归方程可以大大减少所需的加法运算次数,但需要以串行方式计算积分图像。对于具有严格时间限制和低功耗但并行硬件资源的实时嵌入式视觉系统,这通常是不可取的。为了最大限度地减少涉及的硬件资源,本文提出了两种新的基于这些递归方程分解的硬件算法,允许以行并行的方式计算多达四个积分图像值,而不会显著增加加法运算的次数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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