Fu Hao, Bian Liheng, Zhang Jun
Opt Lett. 2020 Jun 1;45(11):3111-3114. doi: 10.1364/OL.395150.
Conventional high-level sensing techniques require high-fidelity images as input to extract target features. The images are produced by either complex imaging hardware or high-complexity reconstruction algorithms. In this Letter, we propose single-pixel sensing (SPS) that performs high-level sensing directly from a small amount of coupled single-pixel measurements, without the conventional image acquisition and reconstruction process. The technique consists of three steps, including binarized light modulation at ∼22.7kHz refresh rate, single-pixel coupled detection with a wide working spectrum and high signal-to-noise ratio, and end-to-end deep-learning-based decoding that reduces both hardware and software complexity. Also, the binarized modulation patterns are optimized with the decoding network by a two-step training strategy, leading to the least required measurements and optimal sensing accuracy. The effectiveness of SPS is experimentally demonstrated on the classification task of the handwritten MNIST dataset, and 96% classification accuracy at ∼1kHz is achieved. The reported SPS technique is a novel framework for efficient machine intelligence, with data-reduced acquisition and load-relieved processing.
传统的高级传感技术需要高保真图像作为输入来提取目标特征。这些图像要么由复杂的成像硬件生成,要么由高复杂度的重建算法生成。在本信函中,我们提出了单像素传感(SPS)技术,该技术可直接从少量耦合的单像素测量中执行高级传感,无需传统的图像采集和重建过程。该技术包括三个步骤,即在约22.7kHz刷新率下进行二值化光调制、在宽工作光谱和高信噪比下进行单像素耦合检测以及基于端到端深度学习的解码,这降低了硬件和软件的复杂性。此外,通过两步训练策略,利用解码网络对二值化调制模式进行优化,从而实现最少的测量次数和最佳的传感精度。在手写MNIST数据集的分类任务上通过实验证明了SPS的有效性,在约1kHz时实现了96%的分类准确率。所报道的SPS技术是一种用于高效机器智能的新型框架,具有数据减少的采集和减轻负载的处理能力。