二维模式多层BAM的光学内积实现

Hyuek-Jae Lee, Soo-Young Lee, C. Park, S. Shin
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引用次数: 0

摘要

提出了一种二维输入输出模式的多层双向联想存储器(MBAM)光学内积结构。所提出的体系结构采用紧凑的固体模块用于单层前馈网络,可以级联用于MBAM。代替模拟互连权重内积方案存储输入和输出模式。对于二进制输入和输出模式,这种内积方案只需要二进制空间光调制器,并且可扩展到非常大尺寸的实现。与一维模式的光学神经网络不同,多焦点全息图和透镜阵列成为这些模块的重要组成部分。通过对异或问题的电光内积实现验证了MBAM的性能。
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Optical inner-product implementations for multi-layer BAM with 2-dimensional patterns
The authors present an optical inner-product architecture for MBAM (multi-layer bidirectional associative memory) with two-dimensional input and output patterns. The proposed architecture utilizes compact solid modules for single-layer feedforward networks, which may be cascaded for MBAM. Instead of analog interconnection weights the inner-product scheme stores input and output patterns. For binary input and output patterns this inner-product scheme requires binary spatial light modulators only, and is scalable to very large-size implementations. Unlike optical neural networks for one-dimensional patterns, multifocus holograms and lenslet arrays become essential components in these modules. The performance of the MBAM was demonstrated by an electrooptic inner-product implementation for the exclusive-OR problem.<>
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