Learning Goals from Failure
This addresses the challenge of learning goal representations from video without direct supervision, which is incremental as it builds on developmental psychology insights.
The paper tackles the problem of predicting underlying goals from video of unintentional human actions, achieving competitive or superior performance compared to supervised baselines trained on successful goal executions.
We introduce a framework that predicts the goals behind observable human action in video. Motivated by evidence in developmental psychology, we leverage video of unintentional action to learn video representations of goals without direct supervision. Our approach models videos as contextual trajectories that represent both low-level motion and high-level action features. Experiments and visualizations show our trained model is able to predict the underlying goals in video of unintentional action. We also propose a method to "automatically correct" unintentional action by leveraging gradient signals of our model to adjust latent trajectories. Although the model is trained with minimal supervision, it is competitive with or outperforms baselines trained on large (supervised) datasets of successfully executed goals, showing that observing unintentional action is crucial to learning about goals in video. Project page: https://aha.cs.columbia.edu/