Share

Export Citation

APA
MLA
Chicago
Harvard
Vancouver
BIBTEX
RIS
Universitas Hasanuddin
Research output:Contribution to journalArticlepeer-review

Object-based image analysis for sago palm classification: The most important features from high-resolution satellite imagery

Hidayat S.

Remote Sensing

Q1
Published: 2018Citations: 20

Abstract

Sago palm (Metroxylon sagu) is a palm tree species originating in Indonesia. In the future, this starch-producing tree will play an important role in food security and biodiversity. Local governments have begun to emphasize the sustainable development of sago palm plantations; therefore, they require near-real-time geospatial information on palm stands. We developed a semi-automated classification scheme for mapping sago palm using machine learning within an object-based image analysis framework with Pleiades-1A imagery. In addition to spectral information, arithmetic, geometric, and textural features were employed to enhance the classification accuracy. Recursive feature elimination was applied to samples to rank the importance of 26 input features. A support vector machine (SVM) was used to perform classifications and resulted in the highest overall accuracy of 85.00% after inclusion of the eight most important features, including three spectral features, three arithmetic features, and two textural features. The SVM classifier showed normal fitting up to the eighth most important feature. According to the McNemar test results, using the top seven to 14 features provided a better classification accuracy. The significance of this research is the revelation of the most important features in recognizing sago palm among other similar tree species.

Access to Document

10.3390/RS10081319

Other files and links

Fingerprint

Support vector machineSciences
PalmSciences
Artificial intelligenceSciences
Computer scienceSciences
Pattern recognition (psychology)Sciences
Satellite imagerySciences
Remote sensingSciences
GeographySciences
Quantum mechanicsSciences
PhysicsSciences