2014
DOI: 10.1007/978-3-319-10593-2_41
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Support Vector Guided Dictionary Learning

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Cited by 95 publications
(71 citation statements)
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“…We evaluate our approach on two face databases: the Extended YaleB database [38] and the AR face database [37], two handwritten digit datasets: MNIST [39] and USPS [40], and an object category dataset: Texture-25 [41]. We compare our method with SRC [12], M-SVM [17], FDDL [24], DKSVD [10], LCKSVD [16], SVGDL [42], S2D2 [19], JDL [11], OSSDL [22], SSR-D [36], and the recently proposed USSDL [18] and SSP-DL [21] algorithms. The last six methods (S2D2, JDL, OSSDL, SSR-D, USSDL, and SSP-DL) are semi-supervised dictionary learning models; the others are supervised dictionary learning methods.…”
Section: Experiments Resultsmentioning
confidence: 99%
“…We evaluate our approach on two face databases: the Extended YaleB database [38] and the AR face database [37], two handwritten digit datasets: MNIST [39] and USPS [40], and an object category dataset: Texture-25 [41]. We compare our method with SRC [12], M-SVM [17], FDDL [24], DKSVD [10], LCKSVD [16], SVGDL [42], S2D2 [19], JDL [11], OSSDL [22], SSR-D [36], and the recently proposed USSDL [18] and SSP-DL [21] algorithms. The last six methods (S2D2, JDL, OSSDL, SSR-D, USSDL, and SSP-DL) are semi-supervised dictionary learning models; the others are supervised dictionary learning methods.…”
Section: Experiments Resultsmentioning
confidence: 99%
“…As a benchmark for the results, different supervised and unsupervised (discriminative) dictionary learning techniques are used, namely (1) KSVD [7], (2) SRC [5] as unsupervised techniques and (3) LC-KSVD [8], (4) FDDL [15], (5) SVGDL [9] as supervised techniques. The results were compared by their performance for full label information for varying dictionary sizes.…”
Section: Resultsmentioning
confidence: 99%
“…Therefore, class specific sub-dictionaries are learned while maintaining discriminative coding vectors by applying the Fisher discrimination criterion. In the recent work of Cai et al [9], a new so called Support Vector Guided Dictionary Learning (SVGDL) algorithm is presented where the discrimination term consists of a weighted summation over squared distances between the pairs of coding vectors. The algorithm automatically assigns non-zero weights to critical vector pairs (the support vectors) leading to a generalized good performance in pattern recognition tasks.…”
Section: Related Workmentioning
confidence: 99%
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