SOTAVerified

Content-Based Image Retrieval

Content-Based Image Retrieval is a well studied problem in computer vision, with retrieval problems generally divided into two groups: category-level retrieval and instance-level retrieval. Given a query image of the Sydney Harbour bridge, for instance, category-level retrieval aims to find any bridge in a given dataset of images, whilst instance-level retrieval must find the Sydney Harbour bridge to be considered a match.

Source: Camera Obscurer: Generative Art for Design Inspiration

Papers

Showing 111120 of 195 papers

TitleStatusHype
Learning Embeddings for Product Visual Search with Triplet Loss and Online Sampling0
Learning Hash Function through Codewords0
Learning Non-Metric Visual Similarity for Image Retrieval0
Learning Regional Attention over Multi-resolution Deep Convolutional Features for Trademark Retrieval0
Learning Image Representations for Content Based Image Retrieval of Radiotherapy Treatment Plans0
Lesion Search with Self-supervised Learning0
Linking Art through Human Poses0
Local Convolutional Features With Unsupervised Training for Image Retrieval0
Local Neighborhood Intensity Pattern: A new texture feature descriptor for image retrieval0
Loc-VAE: Learning Structurally Localized Representation from 3D Brain MR Images for Content-Based Image Retrieval0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1LHRRMAP90.94Unverified