Density-based retrieval from high-similarity image databases

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摘要

Many image classification problems can fruitfully be thought of as image retrieval in a “high similarity image database” (HSID) characterized by being tuned towards a specific application and having a high degree of visual similarity between entries that should be distinguished. We introduce a method for HSID retrieval using a similarity measure based on a linear combination of Jeffreys–Matusita distances between distributions of local (pixelwise) features estimated from a set of automatically and consistently defined image regions. The weight coefficients are estimated based on optimal retrieval performance. Experimental results on the difficult task of visually identifying clones of fungal colonies grown in a petri dish and categorization of pelts show a high retrieval accuracy of the method when combined with standardized sample preparation and image acquisition.

论文关键词:Density based,Identification,Density estimation,Image retrieval

论文评审过程:Received 27 May 2003, Revised 9 February 2004, Accepted 9 February 2004, Available online 26 June 2004.

论文官网地址:https://doi.org/10.1016/j.patcog.2004.02.018