Free-hand sketch-based image retrieval (SBIR) is a specific cross-view retrieval task, in which queries are abstract and ambiguous sketches while the retrieval database is formed with natural images. Work in this area mainly focuses on extracting representative and shared features for sketches and natural images. However, these can neither cope well with the geometric distortion between sketches and images nor be feasible for large-scale SBIR due to the heavy continuous-valued distance computation. In this paper, we speed up SBIR by introducing a novel binary coding method, named Deep Sketch Hashing (DSH), where a semi-heterogeneous deep architecture is proposed and incorporated into an end-to-end binary coding framework. Specifically, three convolutional neural networks are utilized to encode free-hand sketches, natural images and, especially, the auxiliary sketch-tokens which are adopted as bridges to mitigate the sketch-image geometric distortion. The learned DSH codes can effectively capture the cross-view similarities as well as the intrinsic semantic correlations between different categories. To the best of our knowledge, DSH is the first hashing work specifically designed for category-level SBIR with an end-to-end deep architecture. The proposed DSH is comprehensively evaluated on two large-scale datasets of TU-Berlin Extension and Sketchy, and the experiments consistently show DSHs superior SBIR accuracies over several state-of-the-art methods, while achieving significantly reduced retrieval time and memory footprint.
Deep Sketch Hashing: Fast Free-Hand Sketch-Based Image Retrieval
Li Liu,Fumin Shen,Yuming Shen,Xianglong Liu,Ling Shao
Published 2017 in Computer Vision and Pattern Recognition
ABSTRACT
PUBLICATION RECORD
- Publication year
2017
- Venue
Computer Vision and Pattern Recognition
- Publication date
2017-03-16
- Fields of study
Computer Science
- Identifiers
- External record
- Source metadata
Semantic Scholar
CITATION MAP
EXTRACTION MAP
CLAIMS
- DSH codes are reported to capture cross-view similarities and intrinsic semantic correlations, and the method is evaluated on TU-Berlin Extension and Sketchy with superior retrieval accuracy and lower time and memory cost.박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review
- Deep Sketch Hashing (DSH) provides a binary coding approach for fast free-hand sketch-based image retrieval by combining a semi-heterogeneous deep architecture with an end-to-end binary coding framework.박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review
CONCEPTS
- category-level sketch-based image retrieval
A sketch-based retrieval setting that matches sketches and images by semantic category rather than exact instance.
Aliases: category-level SBIR
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review - deep sketch hashing
The proposed deep hashing method that learns binary codes for sketch-based image retrieval.
Aliases: DSH
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review - end-to-end binary coding framework
A training setup that learns binary retrieval codes directly within a unified optimization pipeline.
Aliases: end-to-end binary code framework
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review - free-hand sketch-based image retrieval
A cross-view retrieval task where sketch queries are matched against a database of natural images.
Aliases: SBIR
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review - semi-heterogeneous deep architecture
A deep network design that uses different but related encoders for sketches, natural images, and auxiliary sketch-tokens.
Aliases: semi heterogeneous deep architecture
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review - sketch-tokens
Auxiliary sketch representations used as intermediate bridges between free-hand sketches and natural images.
Aliases: sketch tokens
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review - sketchy
A large-scale sketch-to-image benchmark dataset used to evaluate the retrieval method.
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review - three convolutional neural networks
Three CNN encoders used to process sketches, images, and sketch-tokens in the retrieval model.
Aliases: three CNNs
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review - tu-berlin extension
One of the large-scale benchmark datasets used to evaluate sketch-based image retrieval performance.
Aliases: TU-Berlin
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewJake Seo (Twitter) (bmuzj8twwb) review
REFERENCES
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