Deformable Registration of Textured Range Images by Using Texture and Shape Features

R. Sagawa, Nanaho Osawa, Y. Yagi
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引用次数: 7

Abstract

This paper describes a method to align textured range images of deforming objects. The proposed procedure aligns deformable 3D models by matching both texture and shape features. First, the characteristics of each vertex of a 3D mesh model is defined by computing a color histogram for the texture feature and the average signed distance for the shape feature. Next, the key points, which are the distinctive vertices of a model, are extracted with respect to the texture and shape features. Subsequently, the corresponding points are located by matching the key points of the models before and after deformation. The deforming parameters are computed by minimizing the distance between the corresponding points. The proposed method iterates the correspondence search and deformation to align range images. Finally, the deformation for all vertices is computed by interpolating the parameters of the key points. In the experiments, we obtained textured range images by using a real-time range finder and a camera, and evaluated deformable registration for the range images.
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利用纹理和形状特征实现纹理范围图像的形变配准
本文介绍了一种变形物体的纹理范围图像对齐方法。该方法通过匹配纹理和形状特征来对齐可变形的3D模型。首先,通过计算纹理特征的颜色直方图和形状特征的平均签名距离来定义三维网格模型中每个顶点的特征;其次,根据纹理和形状特征提取关键点,即模型的独特顶点。然后,通过对变形前后模型的关键点进行匹配,定位出相应的点。通过最小化对应点之间的距离来计算变形参数。该方法对距离图像进行对应搜索和变形迭代对齐。最后,通过插值关键点的参数来计算所有顶点的变形。在实验中,我们利用实时测距仪和相机获得了纹理化的距离图像,并评估了距离图像的可变形配准。
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