论文标题

对象分类器的元元加速器

Meta-optic Accelerators for Object Classifiers

论文作者

Zheng, Hanyu, Liu, Quan, Zhou, You, Kravchenko, Ivan I., Huo, Yuankai, Valentine, Jason

论文摘要

深度学习的快速发展导致许多领域的范式转移,从医学图像分析到自主系统。但是,这些进步导致数字神经网络具有较大的计算要求,从而导致计算资源有限时实时决策的高能量消耗和限制。在这里,我们演示了一个基于元光的神经网络加速器,可以将计算昂贵的卷积操作从高速和低功率光学器件中卸载。在此体系结构中,元图在对象分类中启用空间多路复用和其他信息通道(例如极化)。端到端的设计用于将光学和数字系统合作化,从而产生强大的分类器,该分类器可实现95%的手写数字准确分类,并在对数字及其极化状态进行分类方面的精度为94%。这种方法可以使紧凑型,高速和低功率图像和信息处理系统用于机器视觉和人工智能中的广泛应用。

Rapid advances in deep learning have led to paradigm shifts in a number of fields, from medical image analysis to autonomous systems. These advances, however, have resulted in digital neural networks with large computational requirements, resulting in high energy consumption and limitations in real-time decision making when computation resources are limited. Here, we demonstrate a meta-optic based neural network accelerator that can off-load computationally expensive convolution operations into high-speed and low-power optics. In this architecture, metasurfaces enable both spatial multiplexing and additional information channels, such as polarization, in object classification. End-to-end design is used to co-optimize the optical and digital systems resulting in a robust classifier that achieves 95% accurate classification of handwriting digits and 94% accuracy in classifying both the digit and its polarization state. This approach could enable compact, high-speed, and low-power image and information processing systems for a wide range of applications in machine-vision and artificial intelligence.

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