CVApr 20

EAST: Early Action Prediction Sampling Strategy with Token Masking

arXiv:2604.1836728.8
AI Analysis

For action recognition researchers, EAST provides a simple and efficient framework that significantly improves early action prediction accuracy across multiple benchmarks.

EAST proposes a randomized training strategy with token masking for early action prediction, achieving state-of-the-art results on NTU60, SSv2, and UCF101 with improvements of 10.1, 7.7, and 3.9 percentage points, respectively.

Early action prediction seeks to anticipate an action before it fully unfolds, but limited visual evidence makes this task especially challenging. We introduce EAST, a simple and efficient framework that enables a model to reason about incomplete observations. In our empirical study, we identify key components when training early action prediction models. Our key contribution is a randomized training strategy that samples a time step separating observed and unobserved video frames, enabling a single model to generalize seamlessly across all test-time observation ratios. We further show that joint learning on both observed and future (oracle) representations significantly boosts performance, even allowing an encoder-only model to excel. To improve scalability, we propose a token masking procedure that cuts memory usage in half and accelerates training by 2x with negligible accuracy loss. Combined with a forecasting decoder, EAST sets a new state of the art on NTU60, SSv2, and UCF101, surpassing previous best work by 10.1, 7.7, and 3.9 percentage points, respectively.

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