Document Details
Document Type |
: |
Article In Journal |
Document Title |
: |
Moment Feature Based Fast Feature Extraction Algorithm for Moving Object Detection Using Aerial Images Moment Feature Based Fast Feature Extraction Algorithm for Moving Object Detection Using Aerial Images |
Subject |
: |
Computer Science |
Document Language |
: |
English |
Abstract |
: |
Fast and computationally less complex feature extraction for moving object detection using aerial images from unmanned aerial vehicles (UAVs) remains as an elusive goal in the field of computer vision research. The types of features used in current studies concerning moving object detection are typically chosen based on improving detection rate rather than on providing fast and computationally less complex feature extraction methods. Because moving object detection using aerial images from UAVs involves motion as seen from a certain altitude, effective and fast feature extraction is a vital issue for optimum detection performance. This research proposes a two-layer bucket approach based on a new feature extraction algorithm referred to as the moment-based feature extraction algorithm (MFEA). Because a moment represents the coherent intensity of pixels and motion estimation is a motion pixel intensity measurement, this research used this relation to develop the proposed algorithm. The experimental results reveal the successful performance of the proposed MFEA algorithm and the proposed methodology. |
ISSN |
: |
1932-6203 |
Journal Name |
: |
PLOS One |
Volume |
: |
10 |
Issue Number |
: |
16 |
Publishing Year |
: |
1436 AH
2015 AD |
Article Type |
: |
Article |
Added Date |
: |
Tuesday, March 8, 2016 |
|
Researchers
Anton Satria Prabuwono | Satria Prabuwono, Anton | Researcher | Doctorate | antonsatria@eu4m.eu |
|
Back To Researches Page
|