A Smartphone-Based of Wood Identification Using Image Feature Extraction

Author:

Sugiarto Bambang,Gojali Elli A.,Herlan Herlan,Lestari Puji

Abstract

Each wood species has their special characteristics which can be differentiated based on their anatomical structures through wood identification. One of the methods is by detecting macroscopic wood image using computer vision. This method is more rapid and accurate to identify wood species compared to the conventional method. In previous work, we have developed a computer vision technique for wood identification by combining Histogram of Oriented Gradient (HOG) and Support Vector Machine (SVM). As smartphone usage increasing worldwide, capturing wood structures using this smart device is very easy to do and can replace the use of digital microscopes. This paper propose a technique for extraction the wood species on smartphone using HOG method as well as the classification method using SVM on android smartphone. SVM was used to classify the extracted wood textures from the HOG features. In our experiments, wood images of 7 wood species were used i.e Mimusops_-elengi, Melanorrhoea wallichii, Acer niveum, Cratoxylon formosum, Agathis endertii, Dyera costulata and Knema glauca. Each species has a total of 100 training images and 100 testing images. The highest accuracy is obtained by Melanorrhoea wallichii and Agathis endertii species with 84.00% score. The Agathis endertii species has the highest sensitivity and the value reaches 86%. Moreover, the Melanorrhoea wallichii species has a highest score for specificity and precision

Publisher

Universitas Mataram

Subject

General Medicine

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Indonesian Commercial Woods Classification Based on GLCM and K-Nearest Neighbor;International Journal of Engineering and Advanced Technology;2022-08-30

2. Research on Image Texture Feature Extraction Based on Digital Twin;Mathematical Problems in Engineering;2022-06-27

3. Application of Deep Convolution Network Algorithm in Sports Video Hot Spot Detection;Frontiers in Neurorobotics;2022-05-26

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