第134回日本森林学会大会 発表検索
講演詳細
経営部門[Forest Management]
日付 | ポスター発表 |
---|---|
会場名 | (学生ポスター賞の審査対象) |
講演番号 | P-085 |
発表題目 | Discriminating conifer and broadleaf cover in an uneven-aged forest using UAV imagery and machine learning Discriminating conifer and broadleaf cover in an uneven-aged forest using UAV imagery and machine learning |
要旨本文 | This study aimed to explore the feasibility of UAV imagery to discriminate coniferous and broadleaf cover in an uneven-aged mixed forest by applying machine learning classification algorithms. Our study area was Sub-compartment 42B in the University of Tokyo Hokkaido Forest (90.3 ha). The aerial images were acquired using a DJI-Inspire 2 UAV platform in August 2022. We analyzed the RGB information of UAV images over the study area, through semantic segmentation schemes using Random Forest and U-Net models. 80% of the dataset were used for training while 20% for validation for both models. Our results showed that the validation accuracy of U-Net was over 90%, while Random Forest failed to distinguish conifer canopies. Our case study revealed the integration of UAV imagery and U-Net model was more reliable to segment the conifer and broadleaf cover. Moreover, the findings highlight an applicable methodology for describing the dominated tree species groups in uneven-aged mixed forests. |
著者氏名 | ○Nyo Me, Htun1 ・ Owari, Toshiaki2 ・ Tsuyuki, Satoshi1 ・ Hiroshima, Takuya1 |
著者所属 | 1The University of Tokyo ・ 2The University of Tokyo |
キーワード | conifer, broadleaf, UAV imagery, uneven-aged forest, machine learning |
Key word | conifer, broadleaf, UAV imagery, uneven-aged forest, machine learning |