Annotation-Free Human Sketch Quality Assessment
Lan Yang, Kaiyue Pang, Honggang Zhang, Yi-Zhe Song

TL;DR
This paper introduces a novel, annotation-free method called GACL for assessing sketch quality by leveraging feature magnitude, validated through extensive human studies and applicable to image quality assessment and data re-weighting.
Contribution
It proposes GACL, a geometry-aware classification layer that quantifies sketch quality without human annotations and demonstrates its effectiveness across sketches, images, and data cleansing tasks.
Findings
GACL's feature magnitude correlates well with human quality perception.
GACL improves sketch recognition and quality assessment accuracy.
The method extends to natural images and data re-weighting applications.
Abstract
As lovely as bunnies are, your sketched version would probably not do them justice (Fig.~\ref{fig:intro}). This paper recognises this very problem and studies sketch quality assessment for the first time -- letting you find these badly drawn ones. Our key discovery lies in exploiting the magnitude ( norm) of a sketch feature as a quantitative quality metric. We propose Geometry-Aware Classification Layer (GACL), a generic method that makes feature-magnitude-as-quality-metric possible and importantly does it without the need for specific quality annotations from humans. GACL sees feature magnitude and recognisability learning as a dual task, which can be simultaneously optimised under a neat cross-entropy classification loss with theoretic guarantee. This gives GACL a nice geometric interpretation (the better the quality, the easier the recognition), and makes it agnostic to both…
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