Convolutional Tensor-Train LSTM for Spatio-temporal Learning
About
Learning from spatio-temporal data has numerous applications such as human-behavior analysis, object tracking, video compression, and physics simulation.However, existing methods still perform poorly on challenging video tasks such as long-term forecasting. This is because these kinds of challenging tasks require learning long-term spatio-temporal correlations in the video sequence. In this paper, we propose a higher-order convolutional LSTM model that can efficiently learn these correlations, along with a succinct representations of the history. This is accomplished through a novel tensor train module that performs prediction by combining convolutional features across time. To make this feasible in terms of computation and memory requirements, we propose a novel convolutional tensor-train decomposition of the higher-order model. This decomposition reduces the model complexity by jointly approximating a sequence of convolutional kernels asa low-rank tensor-train factorization. As a result, our model outperforms existing approaches, but uses only a fraction of parameters, including the baseline models.Our results achieve state-of-the-art performance in a wide range of applications and datasets, including the multi-steps video prediction on the Moving-MNIST-2and KTH action datasets as well as early activity recognition on the Something-Something V2 dataset.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Prediction | KTH 10 -> 20 steps (test) | PSNR28.36 | 88 | |
| Human Motion Prediction | Human3.6M (test) | -- | 85 | |
| Video Prediction | KTH 10 -> 40 steps (test) | PSNR26.11 | 77 | |
| Video Prediction | Moving-MNIST 10 → 10 (test) | MSE53 | 39 | |
| Precipitation forecasting | Radar Echo | CSI (Threshold 30)57.1 | 14 | |
| Video Prediction | V-MNIST | MSE71.1 | 10 | |
| Video Prediction | Moving-MNIST 10 → 30 (test) | MSE105.7 | 8 |