An associative-processor-based mixed signal system for robust grayscale image recognition

M. Yagi, T. Shibata
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引用次数: 5

Abstract

An associative-processor-based VLSI system architecture has been developed for robust grayscale image recognition. The system receives a 64/spl times/64 pels block of a gray scale image, extracting a feature vector from the image and recognizing the image by template matching. An analog associative processor is adopted as the template matching core because it features compact implementation as well as fast processing due to its fully parallel architecture. For generating feature vectors, dedicated digital CMOS circuits have been developed because of their versatility in the algorithm. The analysis of medical X-ray pictures (Cephalometric landmark identification by expert dentists) was taken as an exercise for the system, and intensive computer simulations have been conducted to optimize the recognition performance of the system. Although the entire system has not yet been implemented on a single chip, all the key sub circuits in the system were fabricated as test circuits and their correct functioning has been experimentally demonstrated. It is also shown by experiment that very low power operation of the template matching core is possible by operating the analog circuitry in the subthreshold regime without degrading recognition performance.
基于关联处理器的混合信号鲁棒灰度图像识别系统
提出了一种基于关联处理器的超大规模集成电路系统架构,用于鲁棒的灰度图像识别。该系统接收灰度图像的64/spl次/64像素块,从图像中提取特征向量,通过模板匹配对图像进行识别。采用模拟关联处理器作为模板匹配核心,实现紧凑,处理速度快。为了生成特征向量,由于其算法的通用性,已经开发出专用的数字CMOS电路。将医学x射线图像的分析(专家牙医的头侧地标识别)作为系统的练习,并进行了密集的计算机模拟以优化系统的识别性能。虽然整个系统尚未在单芯片上实现,但系统中的所有关键子电路都被制作为测试电路,并通过实验证明了它们的正确功能。实验还表明,通过在亚阈值范围内操作模拟电路,可以实现模板匹配核的低功耗运行,而不会降低识别性能。
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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