BRI3L: A BRIGHTNESS ILLUSION IMAGE DATASET FOR IDENTIFICATION AND LOCALIZATION OF REGIONS OF ILLUSORY PERCEPTION
Document Type
Conference Article
Publication Title
Proceedings International Conference on Image Processing Icip
Abstract
Visual illusions play a significant role in understanding visual perception. Current methods in understanding and evaluating visual illusions are mostly deterministic filtering based approach and they evaluate on a handful of visual illusions, and the conclusions therefore, are not generic. To this end, we generate a large-scale dataset of 22,366 images (BRI3L: BRightness Illusion Image dataset for Identification and Localization of illusory perception) of the five types of brightness illusions and benchmark the dataset using data-driven neural network based approaches. The dataset contains label information - (1) whether a particular image is illusory/non-illusory, (2) the segmentation mask of the illusory region of the image. Hence, both the classification and segmentation task can be evaluated using this dataset. We follow the standard psychophysical experiments involving human subjects to validate the dataset. To the best of our knowledge, this is the first attempt to develop a dataset of visual illusions and benchmark using data-driven approach for illusion classification and localization. We consider five well-studied types of brightness illusions: 1) Hermann grid, 2) Simultaneous Brightness Contrast, 3) White illusion, 4) Grid illusion, and 5) Induced Grating illusion. Benchmarking on the dataset achieves 99.56% accuracy in illusion identification and 84.37% pixel accuracy in illusion localization. The application of deep learning model, it is shown, also generalizes over unseen brightness illusions like brightness assimilation to contrast transitions. We also test the ability of state-of-the-art diffusion models to generate brightness illusions. We have provided all the code, dataset, instructions etc in the github repo: https://github.com/aniket004/BRI3L.
First Page
62
Last Page
68
DOI
10.1109/ICIP51287.2024.10647946
Publication Date
1-1-2024
Recommended Citation
Roy, Aniket; Roy, Anirban; Mitra, Soma; and Ghosh, Kuntal, "BRI3L: A BRIGHTNESS ILLUSION IMAGE DATASET FOR IDENTIFICATION AND LOCALIZATION OF REGIONS OF ILLUSORY PERCEPTION" (2024). Conference Articles. 837.
https://digitalcommons.isical.ac.in/conf-articles/837
Comments
Open Access; Green Open Access