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A class of photometric invariants: separating material from shape and illumination

机译:一类光度不变:将材料与形状和照明分开

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We derive a new class of photometric invariants that can be used for a variety of vision tasks including lighting invariant material segmentation, change detection and tracking, as well as material invariant shape recognition. The key idea is the formulation of a scene radiance model for the class of "separable" BRDFs, that can be decomposed into material related terms and object shape and lighting related terms. All the proposed invariants are simple rational functions of the appearance parameters (say, material or shape and lighting). The invariants in this class differ from one another in the number and type of image measurements they require. Most of the invariants in this class need changes in illumination or object position between image acquisitions. The invariants can handle large changes in lighting which pose problems for most existing vision algorithms. We demonstrate the power of these invariants using scenes with complex shapes, materials, textures, shadows and specularities.
机译:我们派生了一类新的光度不变,可用于各种视觉任务,包括照明不变的材料分割,改变检测和跟踪,以及材料不变的形状识别。关键思想是为“可分离”BRDFS类的场景辐宽模型的制定,可以分解成材料相关术语和物体形状和照明相关术语。所有拟议的不变性都是外观参数的简单合理功能(例如,例如,材料或形状和照明)。此类中的不变性在他们所需的图像测量的数量和类型中彼此不同。此类中的大多数不变性需要图像采集之间的照明或对象位置的变化。不变性可以处理为大多数现有视觉算法构成问题的照明变化。我们使用具有复杂形状,材料,纹理,阴影和镜面和镜面的场景来展示这些不变性的力量。

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