Modeling surface color discrimination under different lighting environments using image chromatic statistics and convolutional neural networks.

Samuel Ponting, Takuma Morimoto, Hannah E Smithson
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引用次数: 2

Abstract

We modeled discrimination thresholds for object colors under different lighting environments [J. Opt. Soc. Am. 35, B244 (2018)]. First, we built models based on chromatic statistics, testing 60 models in total. Second, we trained convolutional neural networks (CNNs), using 160,280 images labeled by either the ground-truth or human responses. No single chromatic statistics model was sufficient to describe human discrimination thresholds across conditions, while human-response-trained CNNs nearly perfectly predicted human thresholds. Guided by region-of-interest analysis of the network, we modified the chromatic statistics models to use only the lower regions of the objects, which substantially improved performance.
利用图像色彩统计和卷积神经网络对不同光照环境下的表面颜色判别进行建模。
在不同光照环境下对物体颜色进行判别阈值建模[J]。选择,Soc。[j].中国科学院学报,2014(5)。首先,我们建立了基于色统计的模型,共测试了60个模型。其次,我们训练卷积神经网络(cnn),使用160,280张图像标记,这些图像要么是真实的,要么是人类的反应。没有单一的彩色统计模型足以描述不同条件下的人类歧视阈值,而人类反应训练的cnn几乎完美地预测了人类阈值。在网络兴趣区域分析的指导下,我们修改了颜色统计模型,只使用对象的较低区域,这大大提高了性能。
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期刊介绍: OSA was published by The Optical Society from January 1917 to December 1983 before dividing into JOSA A: Optics and Image Science and JOSA B: Optical Physics in 1984.
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