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Published byKory Blake Modified over 9 years ago
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Content-based Image Retrieval Mei Wu Faculty of Computer Science Dalhousie University
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Motivation The huge amount of images, resulting from the fast development of multimedia and the wide spread of internet, makes user-labelled annotation method “mission impossible”. People are seeking for automatic image retrieval methods which are based on images own contents, such as color, texture and shape, rather than manually- labelled annotations. CBIR can be broadly used in areas, such as crime prevention, medical diagnosis, satellite imaging and online searching.
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CBIR System Architecture
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Image Content Representation 8 Base GET types GET grouping Sample PGET (upper), JGET (lower)Image content representation
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Two Samples Query imageThe top ten retrieved images
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Experimental Results Precision(10)Recall(20) GET OnlyGET, PSSGET, AW-PSSGET OnlyGET, PSSGET, AW-PSS Building(04_25_1)0.8 0.290.24 Flower(12_33_1)0.90.810.48 0.52 Tree(15_19_1)0.90.8 0.70.65 Mountain(15_47_1)0.80.70.90.460.390.46 Airplane(20_20_1)0.60.8 0.380.420.5 Ferry(2026_29_1)0.9 0.92 Car(29_06_1)0.50.70.90.50.750.81 Average0.770.790.870.530.550.59 Precision(10)Recall(20) ColorHistColorCorrP-ShapeColorHistColorCorrP-Shape Building(04_25_1)0.70.60.80.180.210.24 Flower(12_33_1)10.710.120.560.52 Tree(15_19_1)0.1 0.80.150.10.65 Mountain(15_47_1)0.60.70.90.290.540.46 Airplane(20_20_1)0.50.40.80.290.250.5 Ferry(2026_29_1)0.50.9 0.540.92 Car(29_06_1)0.510.90.630.81 Average0.560.630.870.310.480.59 Shape features comparison Shape/color comparison
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