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Papers/VILA: Learning Image Aesthetics from User Comments with Vi...

VILA: Learning Image Aesthetics from User Comments with Vision-Language Pretraining

Junjie Ke, Keren Ye, Jiahui Yu, Yonghui Wu, Peyman Milanfar, Feng Yang

2023-03-24CVPR 2023 1Video Quality AssessmentLanguage Modelling
PaperPDFCodeCode(official)

Abstract

Assessing the aesthetics of an image is challenging, as it is influenced by multiple factors including composition, color, style, and high-level semantics. Existing image aesthetic assessment (IAA) methods primarily rely on human-labeled rating scores, which oversimplify the visual aesthetic information that humans perceive. Conversely, user comments offer more comprehensive information and are a more natural way to express human opinions and preferences regarding image aesthetics. In light of this, we propose learning image aesthetics from user comments, and exploring vision-language pretraining methods to learn multimodal aesthetic representations. Specifically, we pretrain an image-text encoder-decoder model with image-comment pairs, using contrastive and generative objectives to learn rich and generic aesthetic semantics without human labels. To efficiently adapt the pretrained model for downstream IAA tasks, we further propose a lightweight rank-based adapter that employs text as an anchor to learn the aesthetic ranking concept. Our results show that our pretrained aesthetic vision-language model outperforms prior works on image aesthetic captioning over the AVA-Captions dataset, and it has powerful zero-shot capability for aesthetic tasks such as zero-shot style classification and zero-shot IAA, surpassing many supervised baselines. With only minimal finetuning parameters using the proposed adapter module, our model achieves state-of-the-art IAA performance over the AVA dataset.

Results

TaskDatasetMetricValueModel
Video UnderstandingMSU SR-QA DatasetKLCC0.2618VILA
Video UnderstandingMSU SR-QA DatasetPLCC0.28846VILA
Video UnderstandingMSU SR-QA DatasetSROCC0.33728VILA
Video Quality AssessmentMSU SR-QA DatasetKLCC0.2618VILA
Video Quality AssessmentMSU SR-QA DatasetPLCC0.28846VILA
Video Quality AssessmentMSU SR-QA DatasetSROCC0.33728VILA
VideoMSU SR-QA DatasetKLCC0.2618VILA
VideoMSU SR-QA DatasetPLCC0.28846VILA
VideoMSU SR-QA DatasetSROCC0.33728VILA

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