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Krystian
Mikolajczyk and Cordelia Schmid "A performance evaluation of local descriptors", IEEE Transactions on Pattern Analysis and Machine Intelligence, 10, 27, pp 1615--1630, 2005.
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369:– Local Energy-based Shape Histogram
458:Feature detection (computer vision)
374:Feature detection (computer vision)
204:Affine invariant feature detection
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142:Maximally stable extremal regions
99:Hessian feature strength measures
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344:Principal components analysis
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361:Speeded Up Robust Features
212:Affine shape adaptation
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350:See also
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61:Robinson
56:Prewitt
41:Deriche
403:This
104:SUSAN
51:Sobel
36:Canny
409:stub
367:LESH
336:SIFT
320:GLOH
248:GLOH
243:SURF
238:SIFT
147:PCBR
109:FAST
253:HOG
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