11 research outputs found
PromptonomyViT: Multi-Task Prompt Learning Improves Video Transformers using Synthetic Scene Data
Action recognition models have achieved impressive results by incorporating
scene-level annotations, such as objects, their relations, 3D structure, and
more. However, obtaining annotations of scene structure for videos requires a
significant amount of effort to gather and annotate, making these methods
expensive to train. In contrast, synthetic datasets generated by graphics
engines provide powerful alternatives for generating scene-level annotations
across multiple tasks. In this work, we propose an approach to leverage
synthetic scene data for improving video understanding. We present a multi-task
prompt learning approach for video transformers, where a shared video
transformer backbone is enhanced by a small set of specialized parameters for
each task. Specifically, we add a set of ``task prompts'', each corresponding
to a different task, and let each prompt predict task-related annotations. This
design allows the model to capture information shared among synthetic scene
tasks as well as information shared between synthetic scene tasks and a real
video downstream task throughout the entire network. We refer to this approach
as ``Promptonomy'', since the prompts model a task-related structure. We
propose the PromptonomyViT model (PViT), a video transformer that incorporates
various types of scene-level information from synthetic data using the
``Promptonomy'' approach. PViT shows strong performance improvements on
multiple video understanding tasks and datasets.Comment: Tech repor