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Learning to Observe: Approximating Human Perceptual Thresholds for Detection of Suprathreshold Image Transformations

机译:学习观察:近似人类的感知阈值,用于检测超阈值图像转换

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Many tasks in computer vision are often calibrated and evaluated relative to human perception. In this paper, we propose to directly approximate the perceptual function performed by human observers completing a visual detection task. Specifically, we present a novel methodology for learning to detect image transformations visible to human observers through approximating perceptual thresholds. To do this, we carry out a subjective two-alternative forced-choice study to estimate perceptual thresholds of human observers detecting local exposure shifts in images. We then leverage transformation equivariant representation learning to overcome issues of limited perceptual data. This representation is then used to train a dense convolutional classifier capable of detecting local suprathreshold exposure shifts - a distortion common to image composites. In this context, our model can approximate perceptual thresholds with an average error of 0.1148 exposure stops between empirical and predicted thresholds. It can also be trained to detect a range of different local transformations.
机译:计算机视觉中的许多任务通常是相对于人类感知进行校准和评估的。在本文中,我们建议直接近似完成视觉检测任务的人类观察者执行的感知功能。具体来说,我们提出了一种新颖的方法,用于学习通过近似感知阈值来检测人类观察者可见的图像变换。为此,我们进行了一项主观的两种选择的强制选择研究,以估计检测图像中局部曝光偏移的人类观察者的感知阈值。然后,我们利用变换等变表示学习来克服感知数据有限的问题。然后,使用该表示来训练密集的卷积分类器,该分类器能够检测局部超阈值曝光偏移-图像合成中常见的失真。在这种情况下,我们的模型可以近似感知阈值,经验阈值和预测阈值之间的平均误差为0.1148。还可以训练它检测一系列不同的局部变换。

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