Two-stage plant species recognition by local mean clustering and Weighted sparse representation classification
Aiming at the difficult problem of plant leaf recognition on the large-scale database, a two-stage local similarity based classification learning (LSCL) method is proposed by combining local mean-based clustering (LMC) method and local sparse representation based classification (SRC) (LWSRC). In the...
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Veröffentlicht in: | Cluster computing 2017-06, Vol.20 (2), p.1517-1525 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Aiming at the difficult problem of plant leaf recognition on the large-scale database, a two-stage local similarity based classification learning (LSCL) method is proposed by combining local mean-based clustering (LMC) method and local sparse representation based classification (SRC) (LWSRC). In the first stage, LMC is applied to coarsely classifying the test sample.
k
nearest neighbors of the test sample, as a neighbor subset, is selected from each training class, then the local geometric center of each class is calculated.
S
candidate neighbor subsets of the test sample are determined with the first
S
smallest distances between the test sample and each local geometric center. In the second stage, LWSRC is proposed to approximately represent the test sample through a linear weighted sum of all
k
×
S
samples of the
S
candidate neighbor subsets. Experimental results on the leaf image database demonstrate that the proposed method not only has a high accuracy and low time cost, but also can be clearly interpreted. |
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ISSN: | 1386-7857 1573-7543 |
DOI: | 10.1007/s10586-017-0859-7 |