Feedback

X
Interpretable Representation Learning for Motion Forecasting

Interpretable Representation Learning for Motion Forecasting

en

0 Ungluers have Faved this Work
We address interpretable representation learning for motion forecasting in self-driving cars. Rather than treating transformers as black boxes, we develop methods to interpret and modify learned representations. We introduce self-supervised pre-training with interpretable objectives. Moreover, we probe latent spaces of forecasting models and reveal interpretable features, allowing us to make targeted interventions. Finally, we uncover retrocausal mechanisms, which enable goal-based instructions.

This book is included in DOAB.

Why read this book? Have your say.

You must be logged in to comment.

Links

DOI: 10.5445/KSP/1000191275

Editions

edition cover

Share

Copy/paste this into your site: