Efficient Hierarchical Markov Random Fields for Object Detection on a Mobile Robot

11/07/2011
by   Colin S. Lea, et al.
0

Object detection and classification using video is necessary for intelligent planning and navigation on a mobile robot. However, current methods can be too slow or not sufficient for distinguishing multiple classes. Techniques that rely on binary (foreground/background) labels incorrectly identify areas with multiple overlapping objects as single segment. We propose two Hierarchical Markov Random Field models in efforts to distinguish connected objects using tiered, binary label sets. Near-realtime performance has been achieved using efficient optimization methods which runs up to 11 frames per second on a dual core 2.2 Ghz processor. Evaluation of both models is done using footage taken from a robot obstacle course at the 2010 Intelligent Ground Vehicle Competition.

READ FULL TEXT

page 1

page 2

page 4

page 5

page 7

research
10/22/2021

CNN-based Omnidirectional Object Detection for HermesBot Autonomous Delivery Robot with Preliminary Frame Classification

Mobile autonomous robots include numerous sensors for environment percep...
research
06/29/2018

Hyperspectral Image Dataset for Benchmarking on Salient Object Detection

Many works have been done on salient object detection using supervised o...
research
04/01/2019

Self-Supervised Robot In-hand Object Learning

In order to complete tasks in a new environment, robots must be able to ...
research
05/21/2022

Boosting Camouflaged Object Detection with Dual-Task Interactive Transformer

Camouflaged object detection intends to discover the concealed objects h...
research
11/15/2022

Demo Abstract: Real-Time Out-of-Distribution Detection on a Mobile Robot

In a cyber-physical system such as an autonomous vehicle (AV), machine l...
research
06/09/2017

Multi-Modal Obstacle Detection in Unstructured Environments with Conditional Random Fields

Reliable obstacle detection and classification in rough and unstructured...

Please sign up or login with your details

Forgot password? Click here to reset