Object shape categorization in RGBD images using hierarchical graph constellation models based on unsupervisedly learned shape parts described by a set of shape specificity levels | IEEE Conference Publication | IEEE Xplore

Object shape categorization in RGBD images using hierarchical graph constellation models based on unsupervisedly learned shape parts described by a set of shape specificity levels


Abstract:

We present an approach for object class learning using a part-based shape categorization in RGB-augmented 3D point clouds captured from cluttered indoor scenes with a Kin...Show More

Abstract:

We present an approach for object class learning using a part-based shape categorization in RGB-augmented 3D point clouds captured from cluttered indoor scenes with a Kinect-like sensor. We propose an unsupervised hierarchical learning procedure which allows to symbolically classify shape parts by different specificity levels of detailedness of their surface-structural appearance. Further, a hierarchical graphical model is learned that reflects the constellation of classified parts from the set of specificity levels learned in the previous step. Finally an energy minimization inference procedure is applied on the hierarchical graphical model to obtain the corresponding shape category of an object instance consisting of a set of shape parts. Experiments show, due to the proposed classification by learning the hierarchy of shape parts combined with generating the hierarchical graphical constellation model of shape parts, the additional evidence on different levels of shape detailedness is a major factor that leads to a more robust and accurate categorization compared to a flat approach. The experiments are conducted for shape categories (sack, barrel and parcel) which typically appear in visuoperceptual-challenging scenarios of logistic processes.
Date of Conference: 14-18 September 2014
Date Added to IEEE Xplore: 06 November 2014
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Conference Location: Chicago, IL, USA

References

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