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Abstract
The application of remote sensing technology in grassland monitoring and management has been ongoing for decades. Compared with traditional ground measurements, remote sensing technology has the overall advantage of convenience, efficiency, and cost effectiveness, especially over large areas. This paper provides a comprehensive review of the latest remote sensing estimation methods for some critical grassland parameters, including above-ground biomass, primary productivity, fractional vegetation cover, and leaf area index. Then, the applications of remote sensing monitoring are also reviewed from the perspective of their use of these parameters and other remote sensing data. In detail, grassland degradation and grassland use monitoring are evaluated. In addition, disaster monitoring and carbon cycle monitoring are also included. Overall, most studies have used empirical models and statistical regression models, while the number of machine learning approaches has an increasing trend. In addition, some specialized methods, such as the light use efficiency approaches for primary productivity and the mixed pixel decomposition methods for vegetation coverage, have been widely used and improved. However, all the above methods have certain limitations. For future work, it is recommended that most applications should adopt the advanced estimation methods rather than simple statistical regression models. In particular, the potential of deep learning in processing high-dimensional data and fitting non-linear relationships should be further explored. Meanwhile, it is also important to explore the potential of some new vegetation indices based on the spectral characteristics of the specific grassland under study. Finally, the fusion of multi-source images should also be considered to address the deficiencies in information and resolution of remote sensing images acquired by a single sensor or satellite.
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Abstract
Reliable estimates of savanna vegetation constituents (i.e., woody and herbaceous vegetation) are essential as they are both responders and drivers of global change. The savanna is a highly heterogenous biome with high variability in land cover types while also being very dynamic at both temporal and spatial scales. To understand the spatial-temporal dynamics of savannas, using Earth Observation (EO) data for mixed-pixel analysis is crucial. Mixed pixel analysis provides detailed land cover data at a sub-pixel level which are essential for conservation purposes, understanding food supply for herbivores, quantifying environmental change, such as bush encroachment, and fuel availability essential for understanding fire dynamics, and for accurate estimation of savanna biomass. This review paper consulted 197 studies employing mixed-pixel analysis in savanna ecosystems. The review indicates that studies have so far attempted to resolve the savanna mixed-pixel issues by using mainly coarse resolution data, such as Terra-Aqua MODIS and AVHRR and medium resolution Landsat, to provide fractional cover data. Hence, there is a lack of spatio-temporal mixed-pixel analysis for savannas at high spatial resolutions. Methods used for mixed-pixel analysis include parametric and non-parametric methods which range from pixel-unmixing models, such as linear spectral mixture analysis (SMA), time series decomposition, empirical methods to link the green vegetation parameters with Vegetation Indices (VIs), and machine learning methods, such as regression trees (RT) and random forests (RF). Most studies were undertaken at local and regional scale, highlighting a research gap for savanna mixed pixel studies at national, continental, and global level. Parametric methods for modeling spatio-temporal mixed pixel analysis were preferred for coarse to medium resolution remote sensing data, while non-parametric methods were preferred for very high to high spatial resolution data. The review indicates a gap for long time series spatio-temporal mixed-pixel analysis of savannas using high resolution data at various scales. There is potential to harmonize the available low resolution EO data with new high-resolution sensors to provide long time series of the savanna mixed pixel, which, according to this review, is missing.
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Martinho VJPD, Bartkiene E, Djekic I, Tarcea M, Barić IC, Černelič-Bizjak M, Szűcs V, Sarcona A, El-Kenawy A, Ferreira V, Klava D, Korzeniowska M, Vittadini E, Leal M, Bolhuis D, Papageorgiou M, Guiné RPF. Determinants of economic motivations for food choice: insights for the understanding of consumer behaviour. Int J Food Sci Nutr 2021; 73:127-139. [PMID: 34148490 DOI: 10.1080/09637486.2021.1939659] [Citation(s) in RCA: 4] [Impact Index Per Article: 1.3] [Reference Citation Analysis] [Abstract] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 10/21/2022]
Abstract
Food consumption involves several dimensions, being some of them directly associated with the consumers' characteristics. The interrelationships between these domains impact consumer behaviour for food choice and the consequent decisions for food consumption. In these frameworks, economic motivations are determinant. On the other hand, the scientific literature highlights that the economic-based stimuli to choose food is still underexplored. In this perspective, the objective of this study was to assess the main sociodemographic and anthropometric determinants of the economic motivations for food choice. For that, a questionnaire survey was carried out involving 11,919 respondents from 16 countries. A validated questionnaire was used, translated into the native languages in all participating countries, using a back-translation process. First, the information obtained was assessed through factor analysis to reduce the number of variables associated with the economic motivations and to identify indexes. After, and considering the indexes obtained as dependent variables, a classification and regression tree analysis was performed. As main insights, it is highlighted that the main determinants of the economic motivations are country of residence, age, gender, civil state, professional activity, educational level, living environment, responsibility for buying food, weight, height, body mass index, healthy diets and physical exercise practices. Additionally, the results also reveal that economic motivations may be associated with two indexes, one related to convenience attitudes and the other to quality concerns. Finally, the younger persons and the women are the social groups more concerned with healthy diets and food quality. In conclusion, this work confirmed that food choice is to a high extent influenced by several sociodemographic and behavioural factors.
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Affiliation(s)
- Vítor J P D Martinho
- Agricultural School and CERNAS-IPV Research Centre, Polytechnic Institute of Viseu, Viseu, Portugal
| | - Elena Bartkiene
- Department of Food Safety and Quality, Lithuanian University of Health Sciences, Kaunas, Lithuania
| | - Ilija Djekic
- Faculty of Agriculture, University of Belgrade, Belgrade, Serbia
| | - Monica Tarcea
- Department of Community Nutrition and Food Safety, University of Medicine, Pharmacy, Science and Technology, Targu-Mures, Romania
| | - Irena Colić Barić
- Faculty of Food Technology and Biotechnology, University of Zagreb, Zagreb, Croatia
| | | | - Viktória Szűcs
- Directorate of Food Industry, Hungarian Chamber of Agriculture, Budapest, Hungary
| | - Alessandra Sarcona
- Department of Nutrition, West Chester University of Pennsylvania, West Chester, PA, USA
| | - Ayman El-Kenawy
- Molecular Biology Department, Genetic Engineering and Biotechnology Institute, University of Sadat City, Sadat, Egypt
| | - Vanessa Ferreira
- Department of Nutrition, Faculty of Biological and Health Sciences, UFVJM University, Diamantina, Brazil
| | - Dace Klava
- Faculty of Food Technology, Latvian University of Agriculture, Jelgava, Latvia
| | - Małgorzata Korzeniowska
- Faculty of Biotechnology and Food Science, Wrocław University of Environmental and Life Sciences, Wroclaw, Poland
| | - Elena Vittadini
- School of Biosciences and Veterinary Medicine, University of Camerino, Camerino, Italy
| | - Marcela Leal
- Red IESVIDAS (Investigación en Estilos de Vida Saludable)/CONINUT (Consorcio de Investigadores en Nutriología), Buenos Aires, Argentina
| | - Dieuwerke Bolhuis
- Food Quality and Design Group, Wageningen University & Research, Wageningen, The Netherlands
| | - Maria Papageorgiou
- Department of Food Science and Technology, International Hellenic University, Thessaloniki, Greece
| | - Raquel P F Guiné
- Agricultural School and CERNAS-IPV Research Centre, Polytechnic Institute of Viseu, Viseu, Portugal
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Amoakoh AO, Aplin P, Awuah KT, Delgado-Fernandez I, Moses C, Alonso CP, Kankam S, Mensah JC. Testing the Contribution of Multi-Source Remote Sensing Features for Random Forest Classification of the Greater Amanzule Tropical Peatland. SENSORS (BASEL, SWITZERLAND) 2021; 21:3399. [PMID: 34068200 PMCID: PMC8153014 DOI: 10.3390/s21103399] [Citation(s) in RCA: 9] [Impact Index Per Article: 3.0] [Reference Citation Analysis] [Abstract] [Key Words] [Grants] [Track Full Text] [Download PDF] [Figures] [Subscribe] [Scholar Register] [Received: 04/01/2021] [Revised: 05/06/2021] [Accepted: 05/10/2021] [Indexed: 11/16/2022]
Abstract
Tropical peatlands such as Ghana's Greater Amanzule peatland are highly valuable ecosystems and under great pressure from anthropogenic land use activities. Accurate measurement of their occurrence and extent is required to facilitate sustainable management. A key challenge, however, is the high cloud cover in the tropics that limits optical remote sensing data acquisition. In this work we combine optical imagery with radar and elevation data to optimise land cover classification for the Greater Amanzule tropical peatland. Sentinel-2, Sentinel-1 and Shuttle Radar Topography Mission (SRTM) imagery were acquired and integrated to drive a machine learning land cover classification using a random forest classifier. Recursive feature elimination was used to optimize high-dimensional and correlated feature space and determine the optimal features for the classification. Six datasets were compared, comprising different combinations of optical, radar and elevation features. Results showed that the best overall accuracy (OA) was found for the integrated Sentinel-2, Sentinel-1 and SRTM dataset (S2+S1+DEM), significantly outperforming all the other classifications with an OA of 94%. Assessment of the sensitivity of land cover classes to image features indicated that elevation and the original Sentinel-1 bands contributed the most to separating tropical peatlands from other land cover types. The integration of more features and the removal of redundant features systematically increased classification accuracy. We estimate Ghana's Greater Amanzule peatland covers 60,187 ha. Our proposed methodological framework contributes a robust workflow for accurate and detailed landscape-scale monitoring of tropical peatlands, while our findings provide timely information critical for the sustainable management of the Greater Amanzule peatland.
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Affiliation(s)
- Alex O. Amoakoh
- Department of Geography and Geology, Edge Hill University, Ormskirk L39 4QP, UK; (A.O.A.); (K.T.A.); (I.D.-F.); (C.M.)
| | - Paul Aplin
- Department of Geography and Geology, Edge Hill University, Ormskirk L39 4QP, UK; (A.O.A.); (K.T.A.); (I.D.-F.); (C.M.)
| | - Kwame T. Awuah
- Department of Geography and Geology, Edge Hill University, Ormskirk L39 4QP, UK; (A.O.A.); (K.T.A.); (I.D.-F.); (C.M.)
| | - Irene Delgado-Fernandez
- Department of Geography and Geology, Edge Hill University, Ormskirk L39 4QP, UK; (A.O.A.); (K.T.A.); (I.D.-F.); (C.M.)
| | - Cherith Moses
- Department of Geography and Geology, Edge Hill University, Ormskirk L39 4QP, UK; (A.O.A.); (K.T.A.); (I.D.-F.); (C.M.)
| | - Carolina Peña Alonso
- Grupo de Geografía Física y Medio Ambiente, Department of Geography, University of Las Palmas de Gran Canaria, 35003 Las Palmas, Spain;
| | - Stephen Kankam
- Hen Mpoano (Our Coast), Takoradi WS-289-9503, Ghana; (S.K.); (J.C.M.)
| | - Justice C. Mensah
- Hen Mpoano (Our Coast), Takoradi WS-289-9503, Ghana; (S.K.); (J.C.M.)
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