论文标题
物理学意识到的可区分离散代码,用于衍射光学神经网络
Physics-aware Differentiable Discrete Codesign for Diffractive Optical Neural Networks
论文作者
论文摘要
与传统的深层神经网络(DNN)相比,衍射光学神经网络(DONNS)在功率效率,并行性和计算速度方面具有显着优势,因此引起了很多关注,与常规的深神经网络(DNN)相比,在数字平台上实现了内在的限制。然而,由于现有的光学设备具有非统一的离散级别和非单调性属性,因此将算法训练算法训练的物理模型参数映射到具有离散值的真实光学设备上。这项工作提出了一个新颖的设备对系统硬件软件代码框架,该框架可以对Donns W.R.T的有效物理感知培训进行跨层的任意实验测量的光学设备。具体而言,使用Gumbel-SoftMax来启用从现实世界设备参数的可区分映射到Donns的正向函数中,其中Donn中的物理参数可以通过简单地最小化ML任务的损耗函数来训练。结果表明,我们提出的框架比常规量化的方法具有显着优势,尤其是使用低精确的光学设备。最后,在低精度设置中,通过物理实验光学系统对所提出的算法进行了充分的验证。
Diffractive optical neural networks (DONNs) have attracted lots of attention as they bring significant advantages in terms of power efficiency, parallelism, and computational speed compared with conventional deep neural networks (DNNs), which have intrinsic limitations when implemented on digital platforms. However, inversely mapping algorithm-trained physical model parameters onto real-world optical devices with discrete values is a non-trivial task as existing optical devices have non-unified discrete levels and non-monotonic properties. This work proposes a novel device-to-system hardware-software codesign framework, which enables efficient physics-aware training of DONNs w.r.t arbitrary experimental measured optical devices across layers. Specifically, Gumbel-Softmax is employed to enable differentiable discrete mapping from real-world device parameters into the forward function of DONNs, where the physical parameters in DONNs can be trained by simply minimizing the loss function of the ML task. The results have demonstrated that our proposed framework offers significant advantages over conventional quantization-based methods, especially with low-precision optical devices. Finally, the proposed algorithm is fully verified with physical experimental optical systems in low-precision settings.