Training a Vision Language Model as Smartphone Assistant
Dorka, Nicolai, Marecki, Janusz, Anwar, Ammar
–arXiv.org Artificial Intelligence
Addressing the challenge of a digital assistant capable of executing a wide array of user tasks, our research focuses on the realm of instruction-based mobile device control. We leverage recent advancements in large language models (LLMs) and present a visual language model (VLM) that can fulfill diverse tasks on mobile devices. It uses the visual input from the device screen and mimics human-like interactions, encompassing gestures such as tapping and swiping. This generality in the input and output space allows our agent to interact with any application on the device. Unlike previous methods, our model operates not only on a single screen image but on vision-language sentences created from sequences of past screenshots along with corresponding actions. Evaluating our method on the challenging Android in the Wild benchmark demonstrates its promising efficacy and potential. As mobile devices continue to evolve, there is an increasing demand for intuitive and efficient methods of interaction. Traditionally, users operate their devices through a series of taps and gestures on the screen.
arXiv.org Artificial Intelligence
Apr-12-2024