角点特征的优化算法

Jian Cao, Hongqian Chen, Huijun Ma, Yong Wang
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引用次数: 1

摘要

角点特征作为最重要的局部特征之一,包含了大量与物体形状有关的信息。在分析了目前流行的几种角点特征后,提出了一些优化算法。优化后的特征对图像尺度和旋转不变性,对噪声的加入和三维视点的变化具有鲁棒性。在本文中,我们描述了利用这些特征来识别刚性物体的方法。作为比较的基准,我们还实现了一些额外的识别系统。对实验结果的性能分析表明,所提出的优化算法是有效的。
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Optimization algorithms for corner features
As one of the most important local features, corner feature contains lots of information with the shape of the objects. After analyzing of several fashionable corner features at present, some optimization algorithms are proposed. These features after optimizing are invariant to image scale and rotation, and are shown robust to addition of noise and changes in 3D viewpoint. In this paper, we describe the approaches to recognize rigid objects using these features. As baselines for comparison, we also implemented some additional recognition systems. The performance analysis on the obtained experimental results demonstrates that the proposed optimization algorithms are effective and efficient.
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