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Shape space estimation by higher-rank of SOM

机译:通过更高级别的SOM估计形状空间

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The aim of this study is to develop an estimation method for a shape space. In this work, “shape space” means a nonlinear subspace formed by a class of visual shapes, in which the continuous change in shapes is naturally represented. By using the shape space, various operations dealing with shapes, such as identification, classification, recognition, and interpolation can be carried out in the shape space. This paper introduces an algorithm based on a generative model of shapes. A higher-rank of the self-organizing map (SOM2) is used to implement the shape space estimation method. We use this method to estimate the shape space of artificial contours. In addition, we present results from a simulation of omnidirectional camera images taken from mobile robots. Our technique accurately predicts changes in image properties as the robot’s attitude changes. Finally, we consider the addition of local features to our method. We show that the inclusion of local features solves the correspondence problem. These results suggest the potential of our technique in the future.
机译:这项研究的目的是开发一种形状空间的估计方法。在本文中,“形状空间”是指由一类视觉形状形成的非线性子空间,其中自然地表示形状的连续变化。通过使用形状空间,可以在形状空间中进行各种处理形状的操作,例如识别,分类,识别和内插。本文介绍了一种基于形状生成模型的算法。使用较高级别的自组织图(SOM2)来实现形状空间估计方法。我们使用这种方法来估计人造轮廓的形状空间。此外,我们提出了从移动机器人拍摄的全向摄像机图像的仿真结果。我们的技术可以准确预测机器人姿态变化时图像属性的变化。最后,我们考虑将局部特征添加到我们的方法中。我们表明,包含局部特征可以解决对应问题。这些结果表明我们的技术在未来的潜力。

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