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Structure Extracting and Matching Based on Similarity-Pictorial Structure Model for Microscopic Images

机译:基于相似摄影结构模型的显微图像结构提取与匹配

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An improved pictorial structure method (PS) is presented in this paper for structure detecting and matching in microscopic images of the micro structure fabricated using micro-fabrication technology. The obtained structure information of the micro objects is important for the following 3d visual calculation process. Although PS method can extract and match features successfully by evaluating the appearance and shape under slightly varying illumination, while the microscopic images are taken under considerable varying illumination, appearance description of traditional PS model performs poor for our application. In this paper, self-similarity descriptors were used for features extracting and appearance describing for images of micro objects under large changed illumination. The special local features on the micro objects ensure the feasibility of self-similarity method. In the proposed method, the self-similarity descriptors of patches which reflect the information of local object structure are extracted. At the same time, the geometric relationship among patches is modeled by PS. By using our Similarity-Pictorial Structure method (combination of local self-similarity descriptors and pictorial structure model), the structure of object can be extracted and matched exactly. Finally, contrast experiments between PS method and our method for structure extracting and matching on object structure in microscopic images of MEMS components under large changed illumination are presented. Experiment results show the effectiveness of our proposed method.
机译:本文提出了一种改进的图形结构方法(PS),用于在使用微细加工技术制造的微细结构的显微图像中进行结构检测和匹配。所获得的微对象的结构信息对于随后的3d视觉计算过程很重要。虽然PS方法可以通过在稍微变化的光照条件下评估外观和形状来成功提取和匹配特征,但是在变化很大的光照条件下拍摄显微图像时,传统PS模型的外观描述对于我们的应用却表现不佳。在本文中,自相似性描述符被用于在大变化照明下的微对象图像的特征提取和外观描述。微观对象上的特殊局部特征确保了自相似方法的可行性。在所提出的方法中,提取了反映局部对象结构信息的补丁的自相似性描述符。同时,补丁之间的几何关系由PS建模。通过使用我们的相似性-图片结构方法(局部自相似性描述符和图片结构模型的组合),可以精确地提取和匹配对象的结构。最后,提出了PS方法与我们的方法在大变化照明下对MEMS组件的显微图像中对象结构进行结构提取和匹配的方法之间的对比实验。实验结果表明了该方法的有效性。

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