Deep learning approach to help Chenopodiaceae biodiversity protection to prevent soil erosion (case study: Yazd province, Iran)

سال انتشار: 1401
نوع سند: مقاله ژورنالی
زبان: انگلیسی
مشاهده: 416

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شناسه ملی سند علمی:

JR_JONASS-2-1_002

تاریخ نمایه سازی: 1 خرداد 1401

چکیده مقاله:

Background and objective: Chenopodiaceae species are important vegetation around the world, especially in the desert and semi-desert areas. Preserving the biodiversity of Chenopodiaceae species is crucial to preventing soil erosion. In addition, most of them are of ecological and economic importance and also play an important role in biodiversity around the world. Conservation of this biodiversity is vital to the survival and sustainability of the ecosystem. To protect plant biodiversity, it is essential to know the plant species in their natural habitats. Therefore, automatic identification of plant species in their habitat helps to analyze the species and thus take care of their biodiversity. Computer vision approaches can be used to automatically identify and classify plant species. Modern approaches use deep learning in computer vision.Materials and methods:  In this study, the ACHENY data set that consists of ۲۷۰۳۰ images of ۳۰ species of Chenopodiaceae are used. Firstly, using the SuperPixel method, larger size images (۴۴۸×۴۴۸) than existing ACHENY dataset images size (۲۲۴×۲۲۴) are created.  Secondly, based on the newly created dataset we introduce a proper deep learning model to identify Chenopodiaceae species.Results and conclusion: The results of the evaluation confirm the improvement of the classification accuracy of ACHENY species by the proposed model compared to the previously presented models. The results of the experiments indicate a superiority of about ۳% accuracy of the proposed method and all evaluation parameters of the research have increased to a reasonable extent.

نویسندگان

Ahmad Heidary-Sharifabad

Department of Computer Engineering, Maybod Branch, Islamic Azad University, Maybod, Iran

Najma Soltani

Department of Computer Engineering, Maybod Branch, Islamic Azad University, Maybod, Iran

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