Abstract:
Protecting plantation forests from pests and diseases are essential for keeping trees healthy and productive. Diagnosis of diseases is critical for disease management in ...Show MoreMetadata
Abstract:
Protecting plantation forests from pests and diseases are essential for keeping trees healthy and productive. Diagnosis of diseases is critical for disease management in plantation forests. For forest plantation with large concession areas, manual identification is time consuming and subjective due to inconsistency of investigator's decision. This paper proposes a method for automatic acacia leaf diseases identification through digital image processing using wavelet energy and Shannon entropy of sub-bands from the orthogonal discrete wavelet packet decomposition (DWPT). These features are used as input for the classifier. A support vector machine (SVM) is used to classify whether a leaf is health or suffering from some diseases. We have examined 1766 leaf samples containing five diseases: leaf spot, leaf blight, leaf curl, phyllode rust and anthracnose leaf spot. The experimental results show that the proposed method obtained accuracy of 91% in differentiating healthy leaves and acacia leaf diseases. The ROC curve of acacia leaf identification indicates that the system is reliable to distinguish the leaf diseases. This system will help to reduce the yield losses and can help surveyors, forest rangers or public users for gathering information, record observation and diseases identification in plantation forests quickly, accurately and automatically.
Published in: 2017 International Conference on Information and Communication Technology Convergence (ICTC)
Date of Conference: 18-20 October 2017
Date Added to IEEE Xplore: 14 December 2017
ISBN Information:
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- IEEE Keywords
- Index Terms
- Shannon Entropy ,
- Forest Plantations ,
- Automatic Identification ,
- Energy Entropy ,
- Leaf Diseases ,
- Wavelet Energy Entropy ,
- Support Vector Machine ,
- Anthracnose ,
- Disease Identification ,
- Digital Image Processing ,
- Leaf Spot ,
- Leaf Curl ,
- Input Class ,
- Leaf Blight ,
- Manual Identification ,
- Wavelet Packet ,
- Signal Processing ,
- True Positive ,
- Disease Characteristics ,
- Feature Space ,
- Radial Basis Function Kernel ,
- Disease Signatures ,
- Pulp And Paper ,
- Area Under Curve ,
- Integrated Pest Management ,
- Kernel Function ,
- Radial Basis Function ,
- Wavelet Transform ,
- Signal Segments ,
- Relative Energy
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Shannon Entropy ,
- Forest Plantations ,
- Automatic Identification ,
- Energy Entropy ,
- Leaf Diseases ,
- Wavelet Energy Entropy ,
- Support Vector Machine ,
- Anthracnose ,
- Disease Identification ,
- Digital Image Processing ,
- Leaf Spot ,
- Leaf Curl ,
- Input Class ,
- Leaf Blight ,
- Manual Identification ,
- Wavelet Packet ,
- Signal Processing ,
- True Positive ,
- Disease Characteristics ,
- Feature Space ,
- Radial Basis Function Kernel ,
- Disease Signatures ,
- Pulp And Paper ,
- Area Under Curve ,
- Integrated Pest Management ,
- Kernel Function ,
- Radial Basis Function ,
- Wavelet Transform ,
- Signal Segments ,
- Relative Energy
- Author Keywords