OBSIR: Object-based stereo image retrieval

ICME(2014)

引用 31|浏览59
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摘要
Recent years, the stereo image has become an emerging media in the field of 3D technology, which leads to an urgent demand of stereo image retrieval. In this paper, we attempt to introduce a framework for object-based stereo image retrieval (OBSIR), which retrieves images containing the similar objects to the one captured in the query image by the user. The proposed approach consists of both online and offline procedures. In the offline procedure, we propose a salient object segmentation method making use of both color and depth to extract objects from each image. The extracted objects are then represented by multiple visual feature descriptors. In order to improve the image search efficiently, we construct an approximate nearest neighbor (ANN) index using cluster-based locality sensitive hashing (LSH). In the online stage, the user may supply the query object by selecting a region of interest (ROI) in the query image, or clicking one of the objects recommended by the salient object detector. For the image retrieval evaluation we build a new dataset containing over 10K stereo images. The experiments on this dataset show that the proposed method can effectively recommend the correct object and the final retrieval result is also better than other baseline methods.
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关键词
offline procedures,query object recommendation,object extraction,lsh,multiple visual feature descriptors,query image,stereo images,stereo image retrieval,locality sensitive hashing,object based stereo image retrieval,image segmentation,query object,3d technology,obsir,roi,baseline methods,ann index,image retrieval,object detection,salient object detection,media,object retrieval,online procedures,stereo image processing,approximate nearest neighbor,image search,region of interest,salient object detector,salient object segmentation method,feature extraction,visualization
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