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Word-parallel associative memory for k-nearest-neighbor with configurable storage space of reference vectors

机译:可配置参考向量存储空间的k最近邻的字并行关联存储器

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Apart from the speed performance, a common IC-implementation problem for nearest neighbor search, one of the most basic algorithms in pattern recognition, is low flexibility to different task applications. We report a digital word-parallel as sociative memory architecture with reconfigurable storage-space of reference vectors and clock-counting-based nearest-Euclidean-distance search, enabling single-chip implementation of k-nearest-neighbor (kNN) classification and configuration for m any different applications. The main time-consuming part of kNN, the clock-based minimal-distance searching, is carried out by weighted frequency dividers that drastically reduce the in principle exponential increase of the worst-case search-clock number with the bit width of vector components to only a linear in crease. This clock-based search concept achieves thus high classification speed, good area-efficiency and low power dissipation. In general, an IC implementation has limited flexibility after manufacturing. The proposed programmable switching circuits, which are located between groups of vector components, enable flexibility of reference feature-vector dimension and number at the same time. After k minimal distance searching, a dedicated circuit for majority vote is used to assign the unknown input to the class with the highest vote value. A test chip in 180 nm CMOS technology, which has 32 rows, 4 elements in each row and 2 8-bit components in each element, achieves low power dissipation of 61.4 mW (at 45.58 MHz and 1.8 V). In particular, the reconfigurable distance search circuit consumes only 11.9 mW.
机译:除了速度性能外,最近邻搜索的常见IC实现问题(模式识别中最基本的算法之一)对于不同任务应用的灵活性较低。我们报告了一种数字单词并行的社交记忆体架构,具有可重新配置的参考向量存储空间和基于时钟计数的最近欧几里德距离搜索,可实现k近邻(kNN)分类和配置的单芯片实现在任何不同的应用程序中。 kNN的主要耗时部分是基于时钟的最小距离搜索,它是由加权分频器执行的,加权分频器在原则上将最坏情况下的搜索时钟数的原则上的指数增加与矢量分量的位宽相乘,从而大幅度减少。只有线性的折痕。因此,这种基于时钟的搜索概念可实现较高的分类速度,良好的区域效率和较低的功耗。通常,IC实现在制造后具有有限的灵活性。所提出的可编程开关电路位于矢量分量组之间,可同时实现参考特征矢量尺寸和数量的灵活性。在k个最小距离搜索之后,用于多数表决的专用电路用于将未知输入分配给具有最高表决值的类别。采用180 nm CMOS技术的测试芯片具有32行,每行4个元素和每个元素2个8位组件,可实现61.4 mW的低功耗(在45.58 MHz和1.8 V时)。特别是,可重新配置的距离搜索电路仅消耗11.9 mW。

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