In this book we have investigated the 3D object class recognition problem. We used an approach that solves this problem with the use of depth images obtained from 3D object models. In the approach we used 3D object class recognition system is composed of two stages; training and testing. In both stages first keypoints are detected from the images and then 2D local image descriptors are built around these keypoints. This is continued by encoding local descriptors into a single descriptor. Just before this step in training stage a codebook is learned and it is used for encoding local descriptors in both stages. Another extra step in training stage is after the descriptors are encoded for each class a binary classifier is trained. Then these classifiers are used in testing stage. We have evaluated different keypoint detection methods 2D local image descriptors and encoding methods. Then we experimentally show their superiorities and weaknesses over each other. Experiments clearly show the best performing keypoint detection method local image description method and feature encoding method in the depth image domain. Different experimental setups yields similar results.
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