核心概念
The author proposes a novel abstraction-aware sketch-based image retrieval framework that leverages pre-trained StyleGAN to handle sketch abstraction at varied levels.
要約
In this content, the authors introduce a novel approach to handling sketch abstraction in sketch-based image retrieval. They propose an abstraction-aware framework that outperforms existing methods in various tasks. The content discusses the methodology, experiments, results, and implications of the proposed approach.
The authors focus on modeling sketch abstraction as a whole, utilizing pre-trained StyleGAN for feature embedding and introducing an abstraction identification head. They conduct extensive experiments showing superior performance in standard SBIR tasks and challenging scenarios like early retrieval and forensic sketch-photo matching.
The proposed method dynamically adapts to different levels of sketch abstraction while maintaining high performance. It outperforms existing state-of-the-art methods in various FG-SBIR tasks and demonstrates effectiveness in handling forensic sketch-photo matching with limited data.
統計
Extensive experiments depict our method to outperform existing state-of-the-arts in standard SBIR tasks along with challenging scenarios like early retrieval, forensic sketch-photo matching, and style-invariant retrieval.
Our method achieves a higher m@A (m@B) of 86.22 (22.30) as compared to 85.38 (21.24) and 85.78 (21.1) claimed in [8] and [11] respectively.
The proposed method achieves an average Acc.@1 gain of 10.77% compared to other SoTA methods for forensic sketch-photo recognition.
引用
"We operate under two guiding principles to tackle abstraction – on feature level, and on retrieval granularity – all to ensure our system has in its DNA means to accommodate all abstract forms of human sketches."
"Our Acc.@q loss uniquely allows a sketch to narrow/broaden its focus in terms of how stringent the evaluation should be – the more abstract a sketch, the less stringent (higher q)."