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Measuring the Biases and Effectiveness of Content-Style Disentanglement
Xiao Liu,Spyridon Thermos,Gabriele Valvano,Agisilaos Chartsias,Alison O'Neil,Sotirios A. Tsaftaris +5 more
TL;DR: In this paper, the authors investigate the role of different biases in content-style disentanglement settings and unveil the relationship between the degree of disentangling and task performance.
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Abstract: A recent spate of state-of-the-art semi- and un-supervised solutions disentangle and encode image "content" into a spatial tensor and image appearance or "style" into a vector, to achieve good performance in spatially equivariant tasks (e.g. image-to-image translation). To achieve this, they employ different model design, learning objective, and data biases. While considerable effort has been made to measure disentanglement in vector representations, and assess its impact on task performance, such analysis for (spatial) content - style disentanglement is lacking. In this paper, we conduct an empirical study to investigate the role of different biases in content-style disentanglement settings and unveil the relationship between the degree of disentanglement and task performance. In particular, we consider the setting where we: (i) identify key design choices and learning constraints for three popular content-style disentanglement models; (ii) relax or remove such constraints in an ablation fashion; and (iii) use two metrics to measure the degree of disentanglement and assess its effect on each task performance. Our experiments reveal that there is a "sweet spot" between disentanglement, task performance and - surprisingly - content interpretability, suggesting that blindly forcing for higher disentanglement can hurt model performance and content factors semanticness. Our findings, as well as the used task-independent metrics, can be used to guide the design and selection of new models for tasks where content-style representations are useful.
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Citations
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Learning Disentangled Representations in the Imaging Domain.
TL;DR: In this paper, the authors discuss applications in medical imaging and computer vision emphasising choices made in exemplar key works and conclude that remaining challenges and opportunities for disentangled representation learning are discussed.
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Measuring Disentanglement: A Review of Metrics
TL;DR: The authors survey supervised disentanglement metrics and thoroughly analyze them and propose a new taxonomy in which all metrics fall into one of the three families: intervention-based, predictor-based and information-based.
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TL;DR: In this article , a systematic investigation of various types of bias can help researchers better understand bias, become aware of practical solutions, and ultimately cultivate the prudent adoption of AI-based approaches to artwork analysis.
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