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A foreground detection algorithm for Time-of-Flight cameras adapted dynamic integration time adjustment and multipath distortions

机译:飞行时间摄像机的前景检测算法适应动态集成时间调整和多径失真

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There are two scenarios often appear in the use of a Time-of-Flight (ToF) camera. One is requiring dynamic adjustment of its integration time to avoid overexposure, the other is multipath distortions happen. In these two scenarios, the pixel values of depth map and intensity map will suddenly and greatly change, and it will effect ToF based applications that require foreground detection. Traditional foreground detection algorithms can not adapt to these scenarios well, since they are sensitive to the sudden large change of pixel values and the threshold of pixel values difference people pick. Therefore, this paper proposes a pixel-insensitive and threshold-free algorithm to deal with the above scenarios. It is an end-to-end model based on deep learning. It takes two intensity maps captured by a ToF camera as input, where one intensity map works as a background, and the other works as a contrast. Taking their actual differences, also called foreground, as a label. Then, using deep learning to learn how to detect foreground based on these inputs and labels. To learn the pattern, datasets are collected under various scenes by multiple ToF cameras, and the training datasets are enlarged through applying a series of random transformations on the foreground and introducing two-dimensional Gaussian noise. Experiments show the new algorithm can stably detect foreground under different circumstances including the two mentioned scenarios.
机译:在使用飞行时间(TOF)相机时,有两种情况通常出现。一个是需要动态调整其集成时间以避免过度曝光,另一个是多径失真。在这两种情况下,深度图和强度图的像素值将突然大大变化,并且它将实现需要前台检测的基于TOF的应用。传统的前景检测算法井不适应这些方案,因为它们对像素值的突然大变化和像素值差异的阈值敏感。因此,本文提出了一种像素不敏感和无阈值算法来处理上述场景。这是基于深度学习的端到端模型。 TOF相机作为输入捕获的两个强度映射,其中一个强度映射用作背景,另一个强度映射作为背景工作。以其实际差异,也称为前景,作为标签。然后,使用深度学习来学习如何根据这些输入和标签来检测前景。为了了解模式,通过多个TOF相机在各种场景下收集数据集,并且通过在前台上应用一系列随机变换并引入二维高斯噪声来放大训练数据集。实验表明,新算法可以在不同情况下稳定地检测前景,包括两个提到的场景。

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