2022
DOI: 10.5194/isprs-annals-v-3-2022-25-2022
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Geographical Transferability of Lulc Image-Based Segmentation Models Using Training Data Automatically Generated From Openstreetmap – Case Study in Portugal

Abstract: Abstract. Synoptic remote sensing systems have been broadly used within supervised classification methods to map land use and land cover (LULC). Such methods rely on high quality sets of training data that are able to characterize the target classes. Often, training data is manually generated, either by field campaigns and/or by photointerpretation of ancillary remote sensing imagery. Several authors already proposed methodologies to attenuate such labour-intensive task of generating training data. One of the … Show more

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“…Traditionally, human experts' manual interpretation of remote sensing data was time-consuming and laborious. With the advent of deep learning techniques, particularly CNNs, automatic LULC feature extraction has become much faster and more accurate [23][24][25][26] . The automatic identification and mapping of different land use and cover types provide valuable information for various applications 17,[27][28][29][30][31] , including urban planning, agriculture, forestry, disaster management, and environmental monitoring.…”
Section: Introductionmentioning
confidence: 99%
“…Traditionally, human experts' manual interpretation of remote sensing data was time-consuming and laborious. With the advent of deep learning techniques, particularly CNNs, automatic LULC feature extraction has become much faster and more accurate [23][24][25][26] . The automatic identification and mapping of different land use and cover types provide valuable information for various applications 17,[27][28][29][30][31] , including urban planning, agriculture, forestry, disaster management, and environmental monitoring.…”
Section: Introductionmentioning
confidence: 99%
“…Traditionally, human experts' manual interpretation of remote sensing data has been time-consuming and laborious. With deep learning techniques, particularly convolutional neural networks (CNNs), automatic LULC feature extraction has become much faster and more accurate [7][8][9][10]. The automatic identification and mapping of different land use and cover types provide valuable information for various applications [1,[11][12][13][14][15], including urban planning, agriculture, forestry, disaster management, and environmental monitoring.…”
Section: Introductionmentioning
confidence: 99%