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NOISE-ROBUST NEURAL NETWORKS AND METHODS THEREOF

机译:噪声鲁棒神经网络及其方法

摘要

The exemplified methods and systems facilitate the training of a noise-robust deep learning network that is sufficiently robust in the recognition of objects in images having extremely noisy elements such that the noise-robust network can match, or exceed, the performance of human counterparts. The extremely noisy elements may correspond to extremely noisy viewing conditions, e.g., that often manifests themselves in the real-world as poor weather or environment conditions, sub-optimal lighting conditions, sub-optimal image acquisition or capture, etc. The noise-robust deep learning network is trained both (i) with noisy training images with low signal-to-combined-signal-and-noise ratio (SSNR) and (ii) either with noiseless, or generally noiseless, training images or a second set of noisy training images having a SSNR value greater than that of the low-SSNR noisy training images.
机译:所例示的方法和系统促进了对噪声强的深度学习网络的训练,该噪声强的深度学习网络在识别具有极其嘈杂的元素的图像中的对象方面足够鲁棒,使得噪声强的网络可以匹配或超过人类对应者的性能。极度嘈杂的元素可能对应于极度嘈杂的观看条件,例如,在现实世界中经常表现为恶劣的天气或环境条件,次佳的照明条件,次佳的图像采集或捕获等。深度学习网络既通过(i)使用低信噪比(SSNR)的嘈杂训练图像进行训练,又(ii)使用无噪声或通常无噪声的训练图像或第二套噪声进行训练SSNR值大于低SSNR噪声训练图像的训练图像。

著录项

  • 公开/公告号US2020074234A1

    专利类型

  • 公开/公告日2020-03-05

    原文格式PDF

  • 申请/专利权人 VANDERBILT UNIVERSITY;

    申请/专利号US201916561576

  • 发明设计人 FRANK TONG;HOJIN JANG;

    申请日2019-09-05

  • 分类号G06K9/62;G06T5;G06T7;

  • 国家 US

  • 入库时间 2022-08-21 11:19:17

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