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Optimization of Content-Based Image Retrieval Functions

机译:基于内容的图像检索功能的优化

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Feature extraction and similarity measurement are two important operations in content-based image retrieval systems. We optimize and vectorize typical feature extraction algorithms, mean and standard deviation, and somesimilarity measurement functions such as the Sum-of-Squared-Differences (SSD), the Sum-of-Absolute Differences (SAD), and histogram intersection on a general-purpose processor enhanced with SIMD extensions. In the straightforward implementation of the mean and standard deviation, there are two passes, one to compute the mean andone to compute the standard deviation.We use a single-loop approach that computes both the mean and the standard deviation in a single pass. This technique yields a speedup of up to 1.85 over the double-loop implementation. We vectorize the single-loop implementation using the MMX and SSE2 extensions. The vectorized versions improve performance by a factor of up to 14.49. In addition,we vectorize the SSD, SAD, and histogram intersection similarity measurements using SSE. The vectorized versions provide a maximum speedup of 1.45, 2.33, and 5.24 for the SSD, the SAD, and histogram intersection, respectively,over the optimized scalar implementations.
机译:特征提取和相似度测量是基于内容的图像检索系统中的两个重要操作。我们优化并矢量化了典型特征提取算法,均值和标准差,以及一些相似性测量功能,例如,平方差和(SSD),绝对差和(SAD)和直方图交点(通常是SIMD扩展增强了专用处理器。在均值和标准差的直接实现中,有两个步骤,一个用于计算均值,一个用于计算标准差。我们使用单循环方法在一次通过中同时计算均值和标准差。与双循环实现相比,该技术的速度最高可提高1.85。我们使用MMX和SSE2扩展对单循环实现进行矢量化。矢量化版本将性能提高了多达14.49倍。此外,我们使用SSE对SSD,SAD和直方图相交相似度测量值进行矢量化处理。矢量化版本在优化的标量实现上分别为SSD,SAD和直方图交集提供了1.45、2.33和5.24的最大加速。

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