Attention Augmented ConvLSTM for Environment Prediction

10/19/2020
by   Bernard Lange, et al.
0

Safe and proactive planning in robotic systems generally requires accurate predictions of the environment. Prior work on environment prediction applied video frame prediction techniques to bird's-eye view environment representations, such as occupancy grids. ConvLSTM-based frameworks used previously often result in significant blurring and vanishing of moving objects, thus hindering their applicability for use in safety-critical applications. In this work, we propose two extensions to the ConvLSTM to address these issues. We present the Temporal Attention Augmented ConvLSTM (TAAConvLSTM) and Self-Attention Augmented ConvLSTM (SAAConvLSTM) frameworks for spatiotemporal occupancy prediction, and demonstrate improved performance over baseline architectures on the real-world KITTI and Waymo datasets.

READ FULL TEXT

page 7

page 8

page 12

research
10/03/2022

LOPR: Latent Occupancy PRediction using Generative Models

Environment prediction frameworks are essential for autonomous vehicles ...
research
11/18/2020

Double-Prong ConvLSTM for Spatiotemporal Occupancy Prediction in Dynamic Environments

Predicting the future occupancy state of an environment is important to ...
research
12/02/2020

Safe Reinforcement Learning for Antenna Tilt Optimisation using Shielding and Multiple Baselines

Safe interaction with the environment is one of the most challenging asp...
research
01/26/2022

Self-Attention Neural Bag-of-Features

In this work, we propose several attention formulations for multivariate...
research
01/02/2020

Using CNNs For Users Segmentation In Video See-Through Augmented Virtuality

In this paper, we present preliminary results on the use of deep learnin...
research
06/09/2019

Novelty Detection via Network Saliency in Visual-based Deep Learning

Machine-learning driven safety-critical autonomous systems, such as self...

Please sign up or login with your details

Forgot password? Click here to reset