This research paper introduces a novel multi-task deep learning framework for no-reference image quality assessment (NR-IQA) that outperforms existing methods by leveraging high-frequency image information and a distortion-aware network.
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.
이 연구 논문에서는 인공위성 영상에서 선명도를 객관적으로 평가하기 위해 새롭게 개발된 무참조 영상 화질 지표를 소개합니다.
고품질 압축 이미지의 미묘한 화질 차이를 평가하기 위해 부스팅 기법을 사용한 삼중 자극 비교 방법론과 JND 단위의 세분화된 품질 척도를 제시하고, 대규모 크라우드소싱을 통해 구축된 데이터셋과 분석 결과를 소개한다.
This research paper introduces a novel subjective quality assessment methodology for high-fidelity compressed images, employing boosted and plain triplet comparisons to achieve a fine-grained quality scale in Just Noticeable Difference (JND) units, offering more informative results for practical applications than traditional methods.
針對無參考圖像質量評估 (NR-IQA) 中數據集大小有限的問題,本文提出了一種名為 ATTIQA 的新型預訓練框架,該框架利用屬性感知預訓練從大型數據集中提取與質量相關的知識,從而構建用於 IQA 的通用表示,並在多個 IQA 數據集上實現了最先進的性能。
This paper introduces ATTIQA, a novel pretraining framework for No-Reference Image Quality Assessment (NR-IQA) that leverages attribute-aware pretraining with Vision Language Models (VLMs) to achieve state-of-the-art performance and superior generalization capabilities.
This paper introduces Dog-IQA, a novel training-free method for image quality assessment (IQA) that leverages the capabilities of pre-trained multimodal large language models (MLLMs) and segmentation models to achieve state-of-the-art performance in zero-shot settings.