首页> 外国专利> SEGMENTING AND DENOISING DEPTH IMAGES FOR RECOGNITION APPLICATIONS USING GENERATIVE ADVERSARIAL NEURAL NETWORKS

SEGMENTING AND DENOISING DEPTH IMAGES FOR RECOGNITION APPLICATIONS USING GENERATIVE ADVERSARIAL NEURAL NETWORKS

机译:利用生成逆神经网络对用于识别应用的深度图像进行分块和去噪

摘要

A method of removing noise from a depth image includes presenting real-world depth images in real-time to a first generative adversarial neural network (GAN), the first GAN being trained by synthetic images generated from computer assisted design (CAD) information of at least one object to be recognized in the real-world depth image. The first GAN subtracts the background in the real-world depth image and segments the foreground in the real-world depth image to produce a cleaned real-world depth image. Using the cleaned image, an object of interest in the real-world depth image can be identified via the first GAN trained with synthetic images and the cleaned real-world depth image. In an embodiment the cleaned real-world depth image from the first GAN is provided to a second GAN that provides additional noise cancellation and recovery of features removed by the first GAN.
机译:一种从深度图像中去除噪声的方法,该方法包括将真实世界的深度图像实时呈现给第一生成对抗神经网络(GAN),该第一GAN由从计算机辅助设计(CAD)信息生成的合成图像进行训练。在现实世界的深度图像中至少要识别一个对象。第一个GAN减去真实深度图像中的背景,并对真实深度图像中的前景进行分割,以生成干净的真实深度图像。使用清洗后的图像,可以通过使用合成图像和清洗后的真实世界深度图像训练的第一个GAN来识别真实世界深度图像中的感兴趣对象。在一个实施例中,将来自第一GAN的清洁的真实世界深度图像提供给第二GAN,该第二GAN提供附加的噪声消除和由第一GAN去除的特征的恢复。

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