单幅多光谱图像的湿度和颜色

Mihoko Shimano, Hiroki Okawa, Yuta Asano, Ryoma Bise, K. Nishino, Imari Sato
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引用次数: 5

摘要

湿润表面及其湿润程度的视觉识别对于许多计算机视觉应用非常重要。它可以让自动驾驶汽车知道道路上的湿滑地点,让人形机器人知道道路上的泥泞区域,让我们知道食品杂货的新鲜程度。在过去,单色的外观变化,即表面在潮湿时变暗的事实,已经被建模来识别潮湿的表面。在本文中,我们证明了颜色的变化,特别是其光谱行为,携带了关于潮湿表面的丰富信息。我们推导了湿表面的分析光谱外观模型,该模型表达了由于表面多次散射和吸收而导致的特征光谱锐化。我们提出了一种估算该光谱外观模型关键参数的新方法,该方法可以从单次观测中恢复原始表面颜色和湿润程度。将该方法应用于多光谱图像,估算出地表湿度和干光谱的空间分布。据我们所知,这项工作是第一次模拟和利用湿表面的光谱特征来恢复其外观。我们用许多潮湿的真实表面进行了全面的实验验证。结果证明了该模型的准确性以及该方法对表面湿度和颜色估计的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wetness and Color from a Single Multispectral Image
Visual recognition of wet surfaces and their degrees of wetness is important for many computer vision applications. It can inform slippery spots on a road to autonomous vehicles, muddy areas of a trail to humanoid robots, and the freshness of groceries to us. In the past, monochromatic appearance change, the fact that surfaces darken when wet, has been modeled to recognize wet surfaces. In this paper, we show that color change, particularly in its spectral behavior, carries rich information about a wet surface. We derive an analytical spectral appearance model of wet surfaces that expresses the characteristic spectral sharpening due to multiple scattering and absorption in the surface. We derive a novel method for estimating key parameters of this spectral appearance model, which enables the recovery of the original surface color and the degree of wetness from a single observation. Applied to a multispectral image, the method estimates the spatial map of wetness together with the dry spectral distribution of the surface. To our knowledge, this work is the first to model and leverage the spectral characteristics of wet surfaces to revert its appearance. We conduct comprehensive experimental validation with a number of wet real surfaces. The results demonstrate the accuracy of our model and the effectiveness of our method for surface wetness and color estimation.
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