DEEP HASHING MULTI-LABEL IMAGE RETRIEVAL WITH ATTENTION MECHANISM

Wu Xie,∗ Mengyin Cui,∗ Manyi Liu,∗ Peilei Wang,∗ and Baohua Qiang∗∗

References

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