Development of young oil palm tree recognition using Haar- based rectangular windows
This paper presents development of Haar-based rectangular windows for recognition of young oil palm tree based on WorldView-2 imagery data. Haar-based rectangular windows or also known as Haar-like rectangular features have been popular in face recognition as used in Viola-Jones object detection fra...
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Institute of Physics Publishing
2016
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my.utm.731792017-11-26T03:37:05Z http://eprints.utm.my/id/eprint/73179/ Development of young oil palm tree recognition using Haar- based rectangular windows Daliman, S. Abu-Bakar, S. A. R. Md Nor Azam, S. H. TK Electrical engineering. Electronics Nuclear engineering This paper presents development of Haar-based rectangular windows for recognition of young oil palm tree based on WorldView-2 imagery data. Haar-based rectangular windows or also known as Haar-like rectangular features have been popular in face recognition as used in Viola-Jones object detection framework. Similar to face recognition, the oil palm tree recognition would also need a suitable Haar-based rectangular windows that best suit to the characteristics of oil palm tree. A set of seven Haar-based rectangular windows have been designed to better match specifically the young oil palm tree as the crown size is much smaller compared to the matured ones. Determination of features for oil palm tree is an essential task to ensure a high successful rate of correct oil palm tree detection. Furthermore, features that reflects the identification of oil palm tree indicate distinctiveness between an oil palm tree and other objects in the image such as buildings, roads and drainage. These features will be trained using support vector machine (SVM) to model the oil palm tree for classifying the testing set and subimages of WorldView-2 imagery data. The resulting classification of young oil palm tree with sensitivity of 98.58% and accuracy of 92.73% shows a promising result that it can be used for intention of developing automatic young oil palm tree counting. Institute of Physics Publishing 2016 Conference or Workshop Item PeerReviewed Daliman, S. and Abu-Bakar, S. A. R. and Md Nor Azam, S. H. (2016) Development of young oil palm tree recognition using Haar- based rectangular windows. In: 8th IGRSM International Conference and Exhibition on Geospatial and Remote Sensing, IGRSM 2016, 13 April 2016 through 14 April 2016, Kuala Lumpur; Malaysia. https://www.scopus.com/inward/record.uri?eid=2-s2.0-84984637700&doi=10.1088%2f1755-1315%2f37%2f1%2f012041&partnerID=40&md5=e4926ea4e21212eb8bc5dd5016d71cc5 |
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TK Electrical engineering. Electronics Nuclear engineering Daliman, S. Abu-Bakar, S. A. R. Md Nor Azam, S. H. Development of young oil palm tree recognition using Haar- based rectangular windows |
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This paper presents development of Haar-based rectangular windows for recognition of young oil palm tree based on WorldView-2 imagery data. Haar-based rectangular windows or also known as Haar-like rectangular features have been popular in face recognition as used in Viola-Jones object detection framework. Similar to face recognition, the oil palm tree recognition would also need a suitable Haar-based rectangular windows that best suit to the characteristics of oil palm tree. A set of seven Haar-based rectangular windows have been designed to better match specifically the young oil palm tree as the crown size is much smaller compared to the matured ones. Determination of features for oil palm tree is an essential task to ensure a high successful rate of correct oil palm tree detection. Furthermore, features that reflects the identification of oil palm tree indicate distinctiveness between an oil palm tree and other objects in the image such as buildings, roads and drainage. These features will be trained using support vector machine (SVM) to model the oil palm tree for classifying the testing set and subimages of WorldView-2 imagery data. The resulting classification of young oil palm tree with sensitivity of 98.58% and accuracy of 92.73% shows a promising result that it can be used for intention of developing automatic young oil palm tree counting. |
format |
Conference or Workshop Item |
author |
Daliman, S. Abu-Bakar, S. A. R. Md Nor Azam, S. H. |
author_facet |
Daliman, S. Abu-Bakar, S. A. R. Md Nor Azam, S. H. |
author_sort |
Daliman, S. |
title |
Development of young oil palm tree recognition using Haar- based rectangular windows |
title_short |
Development of young oil palm tree recognition using Haar- based rectangular windows |
title_full |
Development of young oil palm tree recognition using Haar- based rectangular windows |
title_fullStr |
Development of young oil palm tree recognition using Haar- based rectangular windows |
title_full_unstemmed |
Development of young oil palm tree recognition using Haar- based rectangular windows |
title_sort |
development of young oil palm tree recognition using haar- based rectangular windows |
publisher |
Institute of Physics Publishing |
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2016 |
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http://eprints.utm.my/id/eprint/73179/ https://www.scopus.com/inward/record.uri?eid=2-s2.0-84984637700&doi=10.1088%2f1755-1315%2f37%2f1%2f012041&partnerID=40&md5=e4926ea4e21212eb8bc5dd5016d71cc5 |
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