Quality of forest plantations using aerial images and computer vision techniques
Resumo
Palavras-chave
Texto completo:
PDFReferências
ARMSTRONG, J. S.; COLLOPY, F. Error measures for generalizing about forecasting methods: empirical comparisons. International Journal of Forecasting, v. 8, n. 1, p. 69-80, 1992.
ARTUR, A. G. et al. Variabilidade espacial dos atributos químicos do solo, associada ao microrrelevo. Revista Brasileira de Engenharia Agrícola e Ambiental-Agriambi, v. 18, n. 2, p. 141-149, 2014.
BALLESTEROS, R. et al. Applications of georeferenced high-resolution images obtained with unmanned aerial vehicles. Part I: Description of image acquisition and processing. Precision Agriculture, v. 15, n. 6, p. 579-592, 2014.
BERNARDI, A. C. C. et al. Agricultura de precisão: resultados de um novo olhar. Brasília, DF: Embrapa, 2014. 596 p. Embrapa Instrumentação-Livro técnico (INFOTECA-E).
BORGOGNO-MONDINO, E. et al. A comparison between multispectral aerial and satellite imagery in precision viticulture. Precision Agriculture, v. 19, n. 2, p. 195-217, 2018.
BRADSKI, G. The opencv library. Dr Dobb’s J. Software Tools, v. 25, p. 120-125, 2000.
BURKART, A. et al. Phenological analysis of unmanned aerial vehicle based time series of barley imagery with high temporal resolution. Precision Agriculture, v. 19, n. 1, p. 134-146, 2018.
DELENNE, C. et al. From pixel to vine parcel: a complete methodology for vineyard delineation and characterization using remote-sensing data. Computers and Electronics in Agriculture, v. 70, n. 1, p. 78-83, 2010.
DUARTE, L.; SILVA, P.; TEODORO, A. Development of a QGIS plugin to obtain parameters and elements of plantation trees and vineyards with aerial photographs. ISPRS International Journal of Geo-Information, v. 7, n. 3, p. 109, 2018.
FAN, Z. et al. Automatic tobacco plant detection in UAV images via deep neural networks. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, v. 11, n. 3, p. 876-887, 2018.
GITELSON, A. A. et al. Novel algorithms for remote estimation of vegetation fraction. Remote Sensing of Environment, v. 80, n. 1, p. 76-87, 2002.
GUERRA-HERNÁNDEZ, J. et al. Use of multi-temporal UAV-derived imagery for estimating individual tree growth in Pinus pinea stands. Forests, v. 8, n. 8, p. 300, 2017.
KOH, J. C. et al. Estimation of crop plant density at early mixed growth stages using UAV imagery. Plant Methods, v. 15, n. 1, p. 64, 2019.
LAVRAČ, N.; FLACH, P.; ZUPAN, B. Rule evaluation measures: a unifying view. In: International Conference on Inductive Logic Programming, v. 1634, p. 174-185, 1999.
MANCONI, A. et al.Optimization of unmanned aerial vehicles flight planning in steep terrains. International Journal of Remote Sensing, v. 40, n. 7, p. 2483-2492, 2019.
MORANDUZZO, T.; MELGANI, F. Automatic car counting method for unmanned aerial vehicle images. IEEE Transactions on Geoscience and Remote Sensing, v. 52, n. 3, p. 1635-1647, 2013.
OLIVEIRA, L. T. et al. Influência da idade na contagem de árvores de Eucalyptus sp. com dados de lidar. Cerne, v. 20, n. 4, p. 557-565, 2014.
ÖZCAN, A. H. et al. Tree crown detection and delineation in satellite images using probabilistic voting. Remote Sensing Letters, v. 8, n. 8, p. 761-770, 2017.
PARK, S. et al. Adaptive estimation of crop water stress in nectarine and peach orchards using high-resolution imagery from an unmanned aerial vehicle (UAV). Remote Sensing, v. 9, n. 8, p. 828, 2017.
POBLETE-ECHEVERRÍA, C. et al. Detection and segmentation of vine canopy in ultra-high spatial resolution RGB imagery obtained from unmanned aerial vehicle (UAV): a case study in a commercial vineyard. Remote Sensing, v. 9, n. 3, p. 268, 2017.
RUZA, M. S. et al. Inventário de Sobrevivência de povoamento de Eucalyptus com uso de Redes Neurais Artificiais em Fotografias obtidas por VANTs. Advances in Forestry Science, v. 4, n. 1, p. 83-88, 2017.
SHI, Y. et al. Unmanned aerial vehicles for high-throughput phenotyping and agronomic research. PloS one, v. 11, n. 7, p. e0159781, 2016.
SHIRATSUCHI, L. S. et al. Sensoriamento remoto: conceitos básicos e aplicações na agricultura de precisão. In: BERNARDI, A. C. C. et al. Agricultura de precisão: resultados de um novo olhar. Brasília, DF: Embrapa, 2014, cap.4, p.58-73. Embrapa Instrumentação-Livro técnico (INFOTECA-E).
STINE, B. E. et al. System and method for product yield prediction using a logic characterization vehicle. Depositante: Brian E. Stine et al. U.S. Patent 6834375B1. 21 dez. 2004.
YAO, H.; QIN, R.; CHEN, X. Unmanned aerial vehicle for remote sensing applications: a review. Remote Sensing, v. 11, n. 12, p. 1443, 2019.
WANG, S. et al. Unmanned Aerial System multispectral mapping for low and variable solar irradiance conditions: potential of tensor decomposition. ISPRS Journal of Photogrammetry and Remote Sensing, v. 155, p. 58-71, 2019.
Revista Ciência Agronômica ISSN 1806-6690 (online) 0045-6888 (impresso), Site: www.ccarevista.ufc.br, e-mail: ccarev@ufc.br - Fone: (85) 3366.9702 - Expediente: 2ª a 6ª feira - de 7 às 17h.