2018
DOI: 10.1360/n112018-00136
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Hierarchical feature fusion hashing for near-duplicate video retrieval

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(1 citation statement)
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“…Xiushan et al [33] proposed a video hashing method based on hierarchical feature fusion with convolutional neural networks (NDVR), which first extracts low-level manual features from the video, then extracts mid-level depth features in the video from the built network model, and fuses colour histograms and local binary patterns as low-level features and annotations of the video as high-level semantic features. Finally, these semantic features are combined with the underlying visual features to learn the hash codes of NDVR using the global structural relationships and complementarities found between the hierarchical features.…”
Section: Related Workmentioning
confidence: 99%
“…Xiushan et al [33] proposed a video hashing method based on hierarchical feature fusion with convolutional neural networks (NDVR), which first extracts low-level manual features from the video, then extracts mid-level depth features in the video from the built network model, and fuses colour histograms and local binary patterns as low-level features and annotations of the video as high-level semantic features. Finally, these semantic features are combined with the underlying visual features to learn the hash codes of NDVR using the global structural relationships and complementarities found between the hierarchical features.…”
Section: Related Workmentioning
confidence: 99%