Low-Level Features from Video for Traffic Jam Detection

by Mirth, Christian
State: New
$61.41
VAT included - FREE Shipping
Mirth, Christian Low-Level Features from Video for Traffic Jam Detection
Mirth, Christian - Low-Level Features from Video for Traffic Jam Detection

Do you like this product? Spread the word!

$61.41 incl. VAT
Only 1 items available Only 1 items available
Delivery: between Thursday, December 9, 2021 and Monday, December 13, 2021
Sales & Shipping: Dodax

Description

Revision with unchanged content. This thesis proposes a novel approach for the early detection of traffic congestion based on low-level image features. The possibility of predicting the evolution of the traffic situation, just based on low-level information from the underlying scene, is studied. The intention of this approach is to overcome the difficulties of existing systems where the computational cost is quite high and moving shadows and occlusion impose problems since vehicle detection is required. First, a couple of traffic-dependent parameters are computed by analyzing low-level image features and their distribution along the road. The relevance of these parameters for describing the current traffic situation is presented. In a second step, these parameters serve as input to a Relevance Vector Machine. The Relevance Vector Machine is used to learn a model for predicting the traffic-dependent parameters in the future from their past observations. Finally, experiments on two test videos show the applicability of the proposed approach for predicting the future traffic situation. This work addresses all people with an interest in early traffic jam detection based on computer vision.

Contributors

Author:
Mirth, Christian

Further information

Biography Artist:
MSc.: Master's programme Telematics at Graz University of Technology.
Language:
English
Number of Pages:
92
Media Type:
Softcover
Publisher:
AV Akademikerverlag

Master Data

Product Type:
Paperback book
Package Dimensions:
0.22 x 0.15 x 0.005 m; 0.186 kg
GTIN:
09783639436129
DUIN:
G1IUV5SDI8M
$61.41
We use cookies on our website to make our services more efficient and more user-friendly. Therefore please select "Accept cookies"! Please read our Privacy Policy for further information.