2015 International Conference on Applied Research in Computer Science and Engineering (ICAR) 2015
DOI: 10.1109/arcse.2015.7338129
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Identity recognition based on the external shape of the human ear

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Cited by 24 publications
(27 citation statements)
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“…The presented results are comparable to what was reported by other authors for similar techniques on the same datasets, e.g., [39], [41], [56], [78], [80], which suggests that the AWE toolbox provides competitive implementations of all evaluated descriptor-based techniques.…”
Section: Methodssupporting
confidence: 88%
“…The presented results are comparable to what was reported by other authors for similar techniques on the same datasets, e.g., [39], [41], [56], [78], [80], which suggests that the AWE toolbox provides competitive implementations of all evaluated descriptor-based techniques.…”
Section: Methodssupporting
confidence: 88%
“…This is likely due to the increased complexity of the images of the USTB II dataset and the fact that the images of the IITD II dataset are more tightly cropped than the images of the USTB II dataset. To compare the performance of the proposed technique with the state of the art PCA and learning based techniques, the Top-1 experimental results of the proposed 2D-CMBPCA, single image PCA, [5] 89.78% 24.28% 2D-MBPCA [13] 92.76% 53.90% Proposed Technique 94.14% 52.90% Learning based Techniques BSIF [20] 97.31% -Wavelet and Neural Network [9] -97.50%…”
Section: Experimental Results For the Proposed 2d-wmbpca Methodsmentioning
confidence: 99%
“…eigenfaces [5], 2D-MBPCA [13], BSIF [20], and wavelet and neural network based [9] techniques are tabulated in Table V. From Table V, it is apparent that the proposed 2D-WMBPCA technique significantly outperforms the single image PCA and the eigenfaces method and gives competitive results for the images of the IITD II dataset when compared with learning based techniques.…”
Section: Experimental Results For the Proposed 2d-wmbpca Methodsmentioning
confidence: 99%
“…Scenario 1 : In this scenario, one ear image of each subject is chosen for training and the remaining ones are used for testing. Since the subjects in these four databases have at least three images, most competing methods [24, 50] conduct three experiments by, respectively, using the first, the second, or the third images per subject for training. Then, the average recognition rate is given in [24, 50].…”
Section: Resultsmentioning
confidence: 99%