Computer User Interface Understanding. A New Dataset and a Learning Framework
- URL: http://arxiv.org/abs/2403.10170v2
- Date: Tue, 27 Aug 2024 18:36:12 GMT
- Title: Computer User Interface Understanding. A New Dataset and a Learning Framework
- Authors: Andrés Muñoz, Daniel Borrajo,
- Abstract summary: We introduce the harder task of computer UI understanding.
We present a dataset with a set of videos where a user is performing a sequence of actions and each image shows the desktop contents at that time point.
We also present a framework that is composed of a synthetic sample generation pipeline to augment the dataset with relevant characteristics.
- Score: 2.4473568032515147
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: User Interface (UI) understanding has been an increasingly popular topic over the last few years. So far, there has been a vast focus solely on web and mobile applications. In this paper, we introduce the harder task of computer UI understanding. With the goal of enabling research in this field, we have generated a dataset with a set of videos where a user is performing a sequence of actions and each image shows the desktop contents at that time point. We also present a framework that is composed of a synthetic sample generation pipeline to augment the dataset with relevant characteristics, and a contrastive learning method to classify images in the videos. We take advantage of the natural conditional, tree-like, relationship of the images' characteristics to regularize the learning of the representations by dealing with multiple partial tasks simultaneously. Experimental results show that the proposed framework outperforms previously proposed hierarchical multi-label contrastive losses in fine-grain UI classification.
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