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TOWARD A THINKING MICROSCOPE: DEEP LEARNING-ENABLED COMPUTATIONAL MICROSCOPY AND SENSING

机译:朝着思维显微镜:支持深度学习的计算显微镜和感应

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Deep learning is a class of machine learning techniques that uses multi-layered artificial neural networks for automated analysis of signals or data. The name comes from the general structure of deep neural networks, which consist of several layers of artificial neurons, each performing a nonlinear operation, stacked over each other. Beyond its main stream applications such as the recognition and labeling of specific features in images, deep learning holds numerous opportunities for revolutionizing image formation, reconstruction and sensing fields. In fact, deep learning is mysteriously powerful and has been surprising optics researchers in what it can achieve for advancing optical microscopy, and introducing new image reconstruction and transformation methods. From physics-inspired optical designs and devices, we are moving toward data-driven designs that will holistically change both optical hardware and software of next generation microscopy and sensing, blending the two in new ways. Today, we sample an image and then act on it using a computer. Powered by deep learning, next generation optical microscopes and sensors will understand a scene or an object and accordingly decide on how and what to sample based on a given task - this will require a perfect marriage of deep learning with new optical microscopy hardware that is designed based on data. For such a thinking microscope, unsupervised learning would be the key to scale up its impact on various areas of science and engineering, where access to labeled image data might not be immediately available or very costly, difficult to acquire. In this presentation, I will provide an overview of some of our recent work on the use of deep neural networks in advancing computational microscopy and sensing systems, also covering their biomedical applications.
机译:深度学习是一类的机器学习技术,它使用多层神经网络为信号或数据自动分析。名字来自深神经网络,其由人造神经元的数层的一般结构中,每个执行一非线性运算,堆叠在彼此之上。除了它的主要流的应用,如在图像识别和特定特征标记,深度学习适用于革命化图像形成,重建和感测领域许多机会。事实上,深学习是神秘强大,在它所能实现推进光学显微镜,并引入新的图像重建和改造方法已经令人惊讶的光学研究者。从物理学的启发光学设计和设备,我们正在朝着数据驱动的设计,将整体上改变下一代显微镜和传感的两个光学硬件和软件,融合的新途径两个移动。今天,我们样本的图像,然后使用计算机上采取行动。技术深度学习,下一代光学显微镜和传感器就会明白一个场景或对象,以及如何和什么根据给定的任务来样据此决定 - 这将需要新的光学显微镜的硬件深度学习所设计的完美结合基于数据。对于这样一个有思想的显微镜,监督学习将扩大其在科学和工程的各个领域,其中访问标记图像数据可能无法立即使用或非常昂贵,很难获得冲击的关键。在本次讲座中,我将在推动计算显微镜和传感系统,还涵盖其生物医学应用提供了一些我们最近在使用深层神经网络的工作概况。

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