2020
DOI: 10.1002/spe.2783
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Deep locality‐sensitive discriminative dictionary learning for semantic video analysis

Abstract: Summary Video semantic analysis (VSA) has received significant attention in the area of Machine Learning for some time now, particularly video surveillance applications with sparse representation and dictionary learning. Studies have shown that the duo has significantly impacted on the classification performance of video detection analysis. In VSA, the locality structure of video semantic data containing more discriminative information is very essential for classification. However, there has been modest feat b… Show more

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Cited by 4 publications
(2 citation statements)
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“…To a great extent, the learning e ect of the operational model of the deep learning algorithm is related to the usability of the semantic features of the generated text [24]. According to the previous literature, the derivation problems mainly include the selection of the derivation algorithm, the control of the learning efciency, the processing of the similar characteristics of information, the management of the proportion of neurons, and the improvement of the model operation rate [25,26]. Some derivation issues have been addressed above, such as assigning text encoders to all modules for distributed text semantic extraction, and separate upper and lower semantic modules for implicit and output layers to reduce confusion about the similarity of text information.…”
Section: Design Of Bidirectional Generation Algorithm For Characteris...mentioning
confidence: 99%
“…To a great extent, the learning e ect of the operational model of the deep learning algorithm is related to the usability of the semantic features of the generated text [24]. According to the previous literature, the derivation problems mainly include the selection of the derivation algorithm, the control of the learning efciency, the processing of the similar characteristics of information, the management of the proportion of neurons, and the improvement of the model operation rate [25,26]. Some derivation issues have been addressed above, such as assigning text encoders to all modules for distributed text semantic extraction, and separate upper and lower semantic modules for implicit and output layers to reduce confusion about the similarity of text information.…”
Section: Design Of Bidirectional Generation Algorithm For Characteris...mentioning
confidence: 99%
“…In order to solve the navigation problem of online learning English dictionary under multiagent [34][35][36][37], this paper improves the navigation problem based on improved reinforcement learning. Conventional reinforcement learning is mainly suitable for single agent architecture, and when the corresponding multiagent appears, its corresponding dynamic environment will have problems, and the corresponding navigation system will also have serious problems.…”
Section: Complexitymentioning
confidence: 99%