Our refined work of ICCV 2023 work DeT, weights and dataset can be downloaded from:
Details will be published after the acceptance of the paper, we aspire for our work to make a valuable contribution to the ongoing research on ICAA within the community!
To enhance the ICAA17K+ dataset, we have incorporated 2,000 detailed labels concerning color attributes including colorfulness, harmony, and temperature annotations.
We develop a comprehensive benchmark comprising of 17 methods, which is the most extensive to date, based on three datasets (ICAA17K+, SPAQ, and PARA) for evaluating the holistic and sub-attribute performance of ICAA methods. Our work achieves state-of-the-art (SOTA) performance on all benchmarks.
einops==0.6.1
ftfy==6.1.1
nni==2.10.1
numpy==1.25.2
pandas==2.1.0
Pillow==10.0.0
PyYAML==6.0.1
regex==2023.8.8
Requests==2.31.0
scikit_learn==1.3.0
scipy==1.11.2
setuptools==65.5.1
tensorboardX==2.6.2.2
timm==0.9.7
tqdm==4.66.1
yacs==0.1.8