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(Reference retrieved automatically from Web of Science through information on FAPESP grant and its corresponding number as mentioned in the publication by the authors.)

Individual tree detection and species classification of Amazonian palms using UAV images and deep learning

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Author(s):
Ferreira, Matheus Pinheiro [1] ; Alves de Almeida, Danilo Roberti [2] ; Papa, Daniel de Almeida [3] ; Silva Minervino, Juliano Baldez [4] ; Pessoa Veras, Hudson Franklin [5] ; Formighieri, Arthur [4] ; Nascimento Santos, Caio Alexandre [3] ; Dantas Ferreira, Marcio Aurelio [6] ; Figueiredo, Evandro Orfano [3] ; Linhares Ferreira, Evandro Jose [7]
Total Authors: 10
Affiliation:
[1] Mil Inst Engn IME, Cartog Engn Sect, Praca Gen Tiburcio 80, BR-22290270 Rio De Janeiro, RJ - Brazil
[2] Univ Sao Paulo, Forest Sci Dept, Av Padua Dias 11, Piracicaba, SP - Brazil
[3] Embrapa Acre, Rodovia BR 364, Km 14, BR-69900056 Rio Branco, AC - Brazil
[4] Univ Fed Acre, Rodovia BR 364, Km 04 Dist Ind, BR-69920900 Rio Branco, AC - Brazil
[5] Fed Univ Parana UFPR, Dept Forestry, Pref Lothario Meissner Ave 900, BR-80210170 Curitiba, Parana - Brazil
[6] Technol Fdn Acre State, BR-69920202 Rio Branco, AC - Brazil
[7] Natl Inst Amazonian Res INPA, Estr Dias Martins 3868, BR-69917560 Rio Branco, AC - Brazil
Total Affiliations: 7
Document type: Journal article
Source: FOREST ECOLOGY AND MANAGEMENT; v. 475, NOV 1 2020.
Web of Science Citations: 1
Abstract

Information regarding the spatial distribution of palm trees in tropical forests is crucial for commercial exploitation and management. However, spatially continuous knowledge of palms occurrence is scarce and difficult to obtain with conventional approaches such as field inventories. Here, we developed a new method to map Amazonian palm species at the individual tree crown (ITC) level using RGB images acquired by a low-cost unmanned aerial vehicle (UAV). Our approach is based on morphological operations performed in the score maps of palm species derived from a fully convolutional neural network model. We first constructed a labeled dataset by dividing the study area (135 ha within an old-growth Amazon forest) into 28 plots of 250 m x 150 m. Then, we manually outlined all palm trees seen in RGB images with 4 cm pixels. We identified three palm species: Attalea butyracea, Euterpe precatoria and Iriartea deltoidea. We randomly selected 22 plots (80%) for training and six plots (20%) for testing. We changed the plots for training and testing to evaluate the variability in the classification accuracy and assess model generalization. Our method outperformed the average producer's accuracy of conventional patch-wise semantic segmentation (CSS) in 4.7%. Moreover, our method correctly identified, on average, 34.7 percentage points more ITCs than CSS, which tended to merge trees that are close to each other. The producer's accuracy of A. butyracea, E. precatoria and I. deltoidea was 78.6 +/- 5.5%, 98.6 +/- 1.4% and 96.6 +/- 3.4%, respectively. Fortunately, one of the most exploited and commercialized palm species in the Amazon (E. precatoria, a.k.a, Acai) was mapped with the highest classification accuracy. Maps of E. precatoria derived from low-cost UAV systems can support management projects and community-based forest monitoring programs in the Amazon. (AU)

FAPESP's process: 18/21338-3 - Monitoring forest landscape restoration from unmanned aerial vehicles using Lidar and hyperspectral remote sensing
Grantee:Danilo Roberti Alves de Almeida
Support Opportunities: Scholarships in Brazil - Post-Doctoral
FAPESP's process: 19/14697-0 - Monitoring the demography and diversity of forests undergoing restoration using a drone-lidar-hyperspectral system
Grantee:Danilo Roberti Alves de Almeida
Support Opportunities: Scholarships abroad - Research Internship - Post-doctor