Sparse convolutional model with semantic expression for waste electrical appliances recognition

Deep neural networks play an important role in the recognition of waste electrical appliances. However, deep neural network components still lack reliability in decision-making features. To address this problem, a sparse convolutional model with semantic expression (SCMSE) is proposed. First, a low-...

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Veröffentlicht in:Science China. Technological sciences 2024-09, Vol.67 (9), p.2881-2893
Hauptverfasser: Han, HongGui, Liu, YiMing, Li, FangYu, Du, YongPing
Format: Artikel
Sprache:eng
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Zusammenfassung:Deep neural networks play an important role in the recognition of waste electrical appliances. However, deep neural network components still lack reliability in decision-making features. To address this problem, a sparse convolutional model with semantic expression (SCMSE) is proposed. First, a low-rank sparse semantic expression component, combining the benefits of residual networks and sparse representation, is adapted to enhance sparse feature extraction and semantic expression. Second, a reliable network architecture is obtained by iterating the optimal sparse solution, enhancing semantic expression. Finally, the results of visualization experiments on the waste electrical appliances dataset demonstrate that the proposed SCMSE can obtain excellent semantic performance.
ISSN:1674-7321
1869-1900
DOI:10.1007/s11431-023-2650-x