Diplaros Aristeidis, Gevers Theo, Patras Ioannis
Informatics Institute, University of Amsterdam, Amsterdam, The Netherlands.
IEEE Trans Image Process. 2006 Jan;15(1):1-11. doi: 10.1109/tip.2005.860320.
In this paper, we propose a new scheme that merges color- and shape-invariant information for object recognition. To obtain robustness against photometric changes, color-invariant derivatives are computed first. Color invariance is an important aspect of any object recognition scheme, as color changes considerably with the variation in illumination, object pose, and camera viewpoint. These color invariant derivatives are then used to obtain similarity invariant shape descriptors. Shape invariance is equally important as, under a change in camera viewpoint and object pose, the shape of a rigid object undergoes a perspective projection on the image plane. Then, the color and shape invariants are combined in a multidimensional color-shape context which is subsequently used as an index. As the indexing scheme makes use of a color-shape invariant context, it provides a high-discriminative information cue robust against varying imaging conditions. The matching function of the color-shape context allows for fast recognition, even in the presence of object occlusion and cluttering. From the experimental results, it is shown that the method recognizes rigid objects with high accuracy in 3-D complex scenes and is robust against changing illumination, camera viewpoint, object pose, and noise.
在本文中,我们提出了一种新的方案,该方案融合了颜色和形状不变信息用于目标识别。为了获得对光度变化的鲁棒性,首先计算颜色不变导数。颜色不变性是任何目标识别方案的一个重要方面,因为颜色会随着光照、物体姿态和相机视角的变化而显著改变。然后,这些颜色不变导数被用于获得相似不变形状描述符。形状不变性同样重要,因为在相机视角和物体姿态发生变化时,刚性物体的形状会在图像平面上进行透视投影。接着,颜色和形状不变量在一个多维颜色 - 形状上下文环境中进行组合,该环境随后被用作索引。由于索引方案利用了颜色 - 形状不变上下文环境,它提供了一个对变化的成像条件具有鲁棒性的高区分性信息线索。颜色 - 形状上下文环境的匹配函数允许快速识别,即使在存在物体遮挡和杂乱的情况下。从实验结果可以看出,该方法在三维复杂场景中能够高精度地识别刚性物体,并且对光照变化、相机视角、物体姿态和噪声具有鲁棒性。