An Efficient Framework For Zero-shot Sketch-based Image Retrieval
2021 Β· Osman Tursun, Simon Denman, Sridha Sridharan, et al.
Abstract
Recently, Zero-shot Sketch-based Image Retrieval (ZS-SBIR) has attracted the attention of the computer vision community due to it's real-world applications, and the more realistic and challenging setting than found in SBIR. ZS-SBIR inherits the main challenges of multiple computer vision problems including content-based Image Retrieval (CBIR), zero-shot learning and domain adaptation. The majority of previous studies using deep neural networks have achieved improved results through either projecting sketch and images into a common low-dimensional space or transferring knowledge from seen to unseen classes. However, those approaches are trained with complex frameworks composed of multiple deep convolutional neural networks (CNNs) and are dependent on category-level word labels. This increases the requirements on training resources and datasets. In comparison, we propose a simple and efficient framework that does not require high computational training resources, and can be trained on da
Authors
(none)
Tags
Stats
Related papers
- Stacked Semantic-guided Network For Zero-shot Sketch-based Image Retrieval (2019)0.00
- A Zero-shot Framework For Sketch-based Image Retrieval (2018)16.49
- Semantic Adversarial Network For Zero-shot Sketch-based Image Retrieval (2019)10.74
- Domain-smoothing Network For Zero-shot Sketch-based Image Retrieval (2021)13.92
- Stacked Adversarial Network For Zero-shot Sketch Based Image Retrieval (2020)10.74
- Adapt And Align To Improve Zero-shot Sketch-based Image Retrieval (2023)0.00
- Zero-shot Everything Sketch-based Image Retrieval, And In Explainable Style (2023)16.67
- Relation-aware Meta-learning For Zero-shot Sketch-based Image Retrieval (2024)0.00