Visual Words Meet BM25: Sparse Auto-Encoder Visual Word Scoring for Image Retrieval explores BM25-V enhances image retrieval by applying BM25 scoring to sparse visual-word activations, offering high recall and interpretability with efficient sparse inverted-index operations.. Commercial viability score: 7/10 in Image Retrieval.
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