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Unsupervised Learning of Object Structure and Dynamics from Videos

About

Extracting and predicting object structure and dynamics from videos without supervision is a major challenge in machine learning. To address this challenge, we adopt a keypoint-based image representation and learn a stochastic dynamics model of the keypoints. Future frames are reconstructed from the keypoints and a reference frame. By modeling dynamics in the keypoint coordinate space, we achieve stable learning and avoid compounding of errors in pixel space. Our method improves upon unstructured representations both for pixel-level video prediction and for downstream tasks requiring object-level understanding of motion dynamics. We evaluate our model on diverse datasets: a multi-agent sports dataset, the Human3.6M dataset, and datasets based on continuous control tasks from the DeepMind Control Suite. The spatially structured representation outperforms unstructured representations on a range of motion-related tasks such as object tracking, action recognition and reward prediction.

Matthias Minderer, Chen Sun, Ruben Villegas, Forrester Cole, Kevin Murphy, Honglak Lee• 2019

Related benchmarks

TaskDatasetResultRank
Video PredictionKTH (test)
FVD395
24
Video PredictionHuman3.6M
SSIM0.901
16
Video PredictionHuman3.6M (test)
FVD556
9
Flat blockVP2 benchmark
Mean Success Rate4.67
7
Green buttonVP2 benchmark
Mean Success Rate68
7
Open slideVP2 benchmark
Mean Success Rate12.67
7
Red buttonVP2 benchmark
Mean Success Rate30.67
7
Video PredictionKTH persons 17-25 (test)
PSNR24.3
7
Blue buttonVP2 benchmark
Mean Success Rate86.67
7
open drawerVP2 benchmark
Mean Success Rate2.67
7
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