Publication | Closed Access
Sketch-based image retrieval on a large scale database
56
Citations
5
References
2012
Year
Unknown Venue
Image AnalysisMachine VisionData ScienceInformation RetrievalImage RetrievalPattern RecognitionEngineeringFeature ExtractionImage DatabaseLarge Scale DatabaseSketch-based ModelingComputer ScienceContent-based Image RetrievalImage SearchImage SimilarityEffective Sketch-based AlgorithmComputer Vision
The paper presents a simple and effective sketch-based algorithm for large scale image retrieval. One of the main challenges in image retrieval is to localize a region in an image which would be matched with the query image in contour. To tackle this problem, we use the human perception mechanism to identify two types of regions in one image: the first type of region (the main region) is defined by a weighted center of image features, suggesting that we could retrieve objects in images regardless of their sizes and positions. The second type of region, called region of interests (ROI), is to find the most salient part of an image, and is helpful to retrieve images with objects similar to the query in a complicated scene. So using the two types of regions as candidate regions for feature extraction, our algorithm could increase the retrieval rate dramatically. Besides, to accelerate the retrieval speed, we first extract orientation features and then organize them in a hierarchal way to generate global-to-local features. Based on this characteristic, a hierarchical database index structure could be built which makes it possible to retrieve images on a very large scale image database online. Finally a real-time image retrieval system on 4.5 million database is developed to verify the proposed algorithm. The experiment results show excellent retrieval performance of the proposed algorithm and comparisons with other algorithms are also given.
| Year | Citations | |
|---|---|---|
Page 1
Page 1