利用立体图像序列增强多维图像重建中的匹配

S. Tazi, V. Jain
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引用次数: 0

摘要

近三十年来,从二维相机图像中重建多维物体的研究越来越多。捕获特征对应关系是其中的一个常见任务。例如,对多个图像的多维几何或纹理特征进行相同的投影处理。传统的结构估计重建要么基于立体图像对,要么基于单目图像序列。这两种方法的边界都对测量立体图像序列的结构产生了兴趣。本文讨论了一种基于立体图像序列的增强匹配算法。提出的EMMR算法对图像的特征提取具有递增的密集表示。我们特别关注这种方法在菠萝特征识别重建和增强、停靠和故障分析等方面的应用。最后进行了总结,并对今后可能的工作进行了讨论。
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Enhance matching in multi-dimensional image reconstruction using stereo image sequences
Since last thirty years, more research has been done in the area of reconstructing multi-dimensional objects from two-dimensional camera images. To capture the feature correspondences are one of the ordinary tasks among them. e.g., a same projection is addressed for multi-dimensional geometrical or textural feature of multiple images. Traditionally structure estimation reconstruction is based on either stereo image pairs or monocular image sequences. Boundaries in both of these approaches are generating to interest for measuring structure in stereo image sequences. In this paper we discuss, an Enhance matching in multi-dimension image reconstruction (EMMR) algorithm using stereo image sequences. The proposed EMMR algorithm has incrementally dense representation of feature extraction of images. We are expressly concerned this approach in the context of recognizing pineapple feature reconstruction and enhancing, dock and fault analysis. Conclusion is drained and possible future work is discussed.
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