Fast Incremental Learning for Off-Road Robot Navigation

06/26/2016
by   Artem Provodin, et al.
0

A promising approach to autonomous driving is machine learning. In such systems, training datasets are created that capture the sensory input to a vehicle as well as the desired response. A disadvantage of using a learned navigation system is that the learning process itself may require a huge number of training examples and a large amount of computing. To avoid the need to collect a large training set of driving examples, we describe a system that takes advantage of the huge number of training examples provided by ImageNet, but is able to adapt quickly using a small training set for the specific driving environment.

READ FULL TEXT

page 2

page 3

page 8

page 9

page 10

page 11

page 12

page 13

research
12/20/2022

Careful Data Curation Stabilizes In-context Learning

In-context learning (ICL) enables large language models (LLMs) to perfor...
research
08/11/2021

Estimation and Navigation Methods with Limited Information for Autonomous Urban Driving

Urban environments offer a challenging scenario for autonomous driving. ...
research
09/11/2019

Human Visual Attention Prediction Boosts Learning & Performance of Autonomous Driving Agents

Autonomous driving is a multi-task problem requiring a deep understandin...
research
03/15/2019

Visual recognition in the wild by sampling deep similarity functions

Recognising relevant objects or object states in its environment is a ba...
research
08/21/2018

Demonstrating PAR4SEM - A Semantic Writing Aid with Adaptive Paraphrasing

In this paper, we present Par4Sem, a semantic writing aid tool based on ...
research
07/19/2019

Learning More From Less: Towards Strengthening Weak Supervision for Ad-Hoc Retrieval

The limited availability of ground truth relevance labels has been a maj...
research
11/30/2018

Are All Training Examples Created Equal? An Empirical Study

Modern computer vision algorithms often rely on very large training data...

Please sign up or login with your details

Forgot password? Click here to reset