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ResNet-L2: A Novel and Efficient Metric for Evaluating Generative Models and Image Quality in Histopathology Images


核心概念
This paper introduces ResNet-L2 (RL2), a novel metric for evaluating the quality of generative models and images in histopathology, addressing the limitations of traditional metrics like FID, especially in data-scarce scenarios.
摘要

ResNet-L2: A Novel and Efficient Metric for Evaluating Generative Models and Image Quality in Histopathology Images

This research paper proposes a new metric called ResNet-L2 (RL2) for evaluating the quality of images generated by generative models in the field of histopathology. The authors argue that existing metrics like FID are inadequate for this task, particularly when dealing with limited data, a common challenge in medical imaging.

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Pranav Jeevan, Neeraj Nixon, Abhijeet Patil, & Amit Sethi. (2024). Evaluation Metric for Quality Control and Generative Models in Histopathology Images. arXiv:2411.01034v1 [eess.IV].
The study aims to develop a more reliable and efficient metric for evaluating generative models and image quality in histopathology, addressing the limitations of traditional metrics in handling data scarcity and domain-specific features.

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