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Sharpening from Shadows: Sensor Transforms for Removing Shadows using a Single Image

机译:从阴影中锐化:传感器变换用于使用单个图像去除阴影

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Illumination conditions in images, such as shadows, can cause problems for both humans and computers. As well as shadows obscuring some features in images for human observers, many computer vision algorithms such as tracking, segmentation, recognition, and categorization are challenged by varying illu-mination. Previously, shadow removal algorithms were proposed that require recording a sequence of calibration images of a fixed scene over different illumination conditions, say over a clay. As another alternative, calibration is replaced by using information in the single image itself seeking a projection that minimizes en-tropy and allows one to generate a grayscale image that has shad-ows effectively eliminated. In this paper we wish to improve the entropy-based method by carrying out a sensor sharpening ma-trix transform first. In preceding work such a sensor transform for shadow removal was sought by utilizing many calibration images. Here, instead, we replace the calibration information by user in-teraction: we ask the user to identify two (or more) regions in a single image that correspond to the same surface(s) in shadow and not in shadow Then using image data from these regions only, we generate a sensor sharpening transform via an optimization aimed at minimizing the difference between in-shadow and out-of-shadow pixel values once they are projected to grayscale. Again, entropy minimization is the driving force leading to a correct sensor matrix transform. Results show that, compared to using the camera sensors as-is, the sensor sharpening is beneficial for better shadow removal.
机译:图像中的照明条件(例如阴影)可能导致人类和计算机的问题。以及阴影掩盖了人类观察者的图像中的一些特征,许多计算机视觉算法,如跟踪,分割,识别和分类,通过不同的illu-mination挑战。以前,提出了暗影去除算法,其需要在不同的照明条件下记录固定场景的校准图像序列,比如粘土。作为另一种替代方案,通过使用单个图像本身中的信息来替换校准,该信息寻求最小化熵的投影,并且允许一个人产生具有有效消除的灰度图像的灰度图像。在本文中,我们希望通过首先执行传感器锐化Ma-Trix变换来改善基于熵的方法。在前面的工作中,通过利用许多校准图像寻求用于阴影移除的传感器变换。相反,我们通过in-teraction替换校准信息:我们要求用户在单个图像中识别两个(或更多)区域,其对应于阴影中的相同表面而不是在阴影中使用图像数据仅从这些区域中,我们通过优化产生传感器锐化变换,旨在最小化阴影内和阴影外像素值之间的差异,一旦投射到灰度。同样,熵最小化是导致正确传感器矩阵变换的驱动力。结果表明,与使用相机传感器的相比,传感器锐化有利于更好的阴影去除。

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