2015
DOI: 10.3390/rs70607378
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Object-Based Greenhouse Horticultural Crop Identification from Multi-Temporal Satellite Imagery: A Case Study in Almeria, Spain

Abstract: Greenhouse detection and mapping via remote sensing is a complex task, which has already been addressed in numerous studies. In this research, the innovative goal relies on the identification of greenhouse horticultural crops that were growing under plastic coverings on 30 September 2013. To this end, object-based image analysis (OBIA) and a decision tree classifier (DT) were applied to a set consisting of eight Landsat 8 OLI images collected from May to November 2013. Moreover, a single WorldView-2 satellite … Show more

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Cited by 67 publications
(65 citation statements)
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“…The WV2 data (5 July 2015) and the L8 OLI scene (8 January 2016) images were geometrically and atmospherically corrected using the capabilities of Geomatica v. 2014 (PCI Geomatics, Richmond Hill, ON, Canada). Further details can be found in [12] where a similar pre-processing scheme was undertaken. In particular, the OLI panchromatic band was not used in this test.…”
Section: Study Area and Satellite Datamentioning
confidence: 99%
See 1 more Smart Citation
“…The WV2 data (5 July 2015) and the L8 OLI scene (8 January 2016) images were geometrically and atmospherically corrected using the capabilities of Geomatica v. 2014 (PCI Geomatics, Richmond Hill, ON, Canada). Further details can be found in [12] where a similar pre-processing scheme was undertaken. In particular, the OLI panchromatic band was not used in this test.…”
Section: Study Area and Satellite Datamentioning
confidence: 99%
“…AssesSeg was used to detect the best band combinations for the detection of plastic-covered greenhouses from three multispectral satellite data: Sentinel-2 (S2), Landsat 8 (L8), and WorldView-2 (WV2) images. The authors' choice to test AssesSeg on plastic-covered greenhouses segmentation was due to their sound experience on this active research topic using both pixel-based approaches [5][6][7][8] and OBIA approaches [9][10][11][12][13][14]. The performed test also demonstrates the importance of the number of reference objects in segmentation quality assessment.…”
Section: Introductionmentioning
confidence: 99%
“…Moreover, the performance of a textural image varies with the complexity of the study area, the texture measure used, the size of moving window, and the image itself [50]; however, it is widely recognized that textural features are highly suitable for application in very high spatial resolution images [44]. It is worth mentioning that textural information was included in this study by means of standard deviation values, which can be considered as first-order textural features [51]. Mean value for every object computed from the corresponding SMA fraction of all the pixels belonging to the same object [47] Standard deviation Fraction PV, Fraction NPV and Fraction Soil Standard deviation (SD) value for every object computed from the corresponding SMA fraction of all the pixels belonging to the same object [47] …”
Section: Features Vector Used To Carry Out Object-based Classificationmentioning
confidence: 99%
“…The optimal segmentation parameters (300, 0.5 and 0.8 for Scale, Shape and Compactness respectively) were attained by applying a trial-and-error approach. In the other two OBIA studies dealing with greenhouse detection from VHR satellite imagery Aguilar et al, 2015), the segmented objects were generated by manual digitizing, thus avoiding the problems related to segmentation stage (e.g. the setting of multiresolution segmentation parameters).…”
Section: Introductionmentioning
confidence: 99%