2020
DOI: 10.1016/j.neucom.2019.12.071
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Label embedded dictionary learning for image classification

Abstract: Recently, label consistent k-svd (LC-KSVD) algorithm has been successfully applied in image classification. The objective function of LC-KSVD is consisted of reconstruction error, classification error and discriminative sparse codes error with 0 -norm sparse regularization term. The 0 -norm, however, leads to NP-hard problem. Despite some methods such as orthogonal matching pursuit can help solve this problem to some extent, it is quite difficult to find the optimum sparse solution. To overcome this limitation… Show more

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Cited by 28 publications
(13 citation statements)
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References 44 publications
(45 reference statements)
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“…In addition, to eliminate the randomness, we randomly (repeatable) split the dataset into the train set and test set for 8 times and the average accuracy is recorded. We compare the CS-SPCA approach with several popular visual classification approaches such as SVM [40], SRC [41], CRC [42], SLRC [43], NRC [44], LC-KSVD [2], CSDL-SRC [6], LEDL [3], and LC-PDL [45]. In our experiments, all the comparison methods are completed under the same experimental conditions, and all the methods are implemented by ourselves and adjusted to the optimal results.…”
Section: A Experimental Settingsmentioning
confidence: 99%
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“…In addition, to eliminate the randomness, we randomly (repeatable) split the dataset into the train set and test set for 8 times and the average accuracy is recorded. We compare the CS-SPCA approach with several popular visual classification approaches such as SVM [40], SRC [41], CRC [42], SLRC [43], NRC [44], LC-KSVD [2], CSDL-SRC [6], LEDL [3], and LC-PDL [45]. In our experiments, all the comparison methods are completed under the same experimental conditions, and all the methods are implemented by ourselves and adjusted to the optimal results.…”
Section: A Experimental Settingsmentioning
confidence: 99%
“…Then, for the CMU-PIE dataset, there are 41, 368 pieces of images of 68 individuals in total, captured under 43 different Methods\Dataset Fifteen Scene MIT Indoor-67 SVM [40] 83.9 53.2 SRC [41] 81.5 52.9 CRC [42] 83.8 54.4 SLRC [43] 83.8 54.8 NRC [44] 80.5 52.3 LC-PDL [44] 84.7 53.6 LC-KSVD [2] 76.7 41.8 CSDL-SRC [6] 81.3 52.7 LEDL [3] 82. TABLE 3 validates the superiority of the CS-SPCA approach compared with other image classification methods.…”
Section: Experiments On Face Recognition Datasetsmentioning
confidence: 99%
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