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  1. Myanmar Institute of Information Technology
  1. Myanmar Institute of Information Technology
  2. Faculty of Computer Science

Regions Labeling in Outdoor Scene Images

http://hdl.handle.net/20.500.12678/0000007726
http://hdl.handle.net/20.500.12678/0000007726
f4c7f897-acc6-4b41-a392-18d57f26b310
6c695c8d-cc8c-42a5-9ae3-661002cdbf02
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Publication type
Journal article
Upload type
Publication
Title
Title Regions Labeling in Outdoor Scene Images
Language en
Publication date 2016-08-16
Authors
Kyawt Kyawt Htay
Nyein Aye
Description
Outdoor scene analysis is a complex problem for both image processing and pattern recognition domains. This paper proposes an approach for labeling regions in outdoor scene images. The basic idea of this approach is to label local image regions into semantic objects such as tree, sky and road etc. There are four phases in the approach: segmentation, feature extraction, region labeling and merging. Firstly, modified Marker-Controlled Watershed (MCWS) algorithm proposes for segmented regions generation. And then, color feature extracted from segmented regions are given as input to 3-layer Artificial Neural Network (ANN) classifier for labeling. Finally, region merging is performed if the two regions are adjacent with the same color values. The proposed method is test on our real scene image dataset which are collected from our university campus.
Keywords
Region labeling · Segmentation · ANN classifier · Region-merging
Journal articles
Series-387
Advances in Intelligent Systems and Computing
Pages 259-268
Vol.1
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