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Efficient Recognition of Highly Similar 3D Objects in Range Images

机译:距离图像中高度相似的3D对象的有效识别

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摘要

Most existing work in 3D object recognition in computer vision has been on recognizing dissimilar objects using a small database. For rapid indexing and recognition of highly similar objects, this paper proposes a novel method which combines the feature embedding for the fast retrieval of surface descriptors, novel similarity measures for correspondence and a support vector machine (SVM)-based learning technique for ranking the hypotheses. The local surface patch (LSP) representation is used to find the correspondences between a model-test pair. Due to its high dimensionality, an embedding algorithm is used that maps the feature vectors to a low-dimensional space where distance relationships are preserved. By searching the nearest neighbors in low dimensions, the similarity between a model-test pair is computed using the novel features. The similarities for all model-test pairs are ranked using the learning algorithm to generate a short list of candidate models for verification. The verification is performed by aligning a model with the test object. The experimental results, on the UND dataset (302 subjects with 604 images) and the UCR dataset (155 subjects with 902 images) that contain 3D human ears, are presented and compared with the geometric hashing technique to demonstrate the efficiency and effectiveness of the proposed approach.
机译:计算机视觉中3D对象识别的大多数现有工作都是使用小型数据库识别异类对象。为了快速索引和识别高度相似的对象,本文提出了一种新颖的方法,该方法结合了用于快速提取表面描述符的特征嵌入,新颖的对应相似度度量和基于支持向量机(SVM)的用于对假设进行排名的学习技术。局部表面补丁(LSP)表示用于查找模型测试对之间的对应关系。由于其高维性,使用了一种嵌入算法,该算法将特征向量映射到保留距离关系的低维空间。通过在低维中搜索最近的邻居,可以使用新颖特征来计算模型测试对之间的相似度。使用学习算法对所有模型测试对的相似性进行排名,以生成候选模型的简短列表以进行验证。通过将模型与测试对象对齐来执行验证。给出了包含3D人耳的UND数据集(302个带有604个图像的对象)和UCR数据集(155个带有902个图像的对象)的实验结果,并与几何哈希技术进行了比较,以证明所提出的算法的有效性和有效性。方法。

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