Assessment of land use and land cover change detection and prediction using deep learning techniques for the southwestern coastal region, Goa, India

dc.contributor.authorNaik, N.
dc.contributor.authorChandrasekaran, K.
dc.contributor.authorSundaram, V.
dc.contributor.authorPrabhavathy, P.
dc.date.accessioned2026-02-04T12:24:41Z
dc.date.issued2024
dc.description.abstractUnderstanding the connections between human activities and the natural environment depends heavily on information about land use and land cover (LULC) in the form of accurate LULC maps. Environmental monitoring using deep learning (DL) is rapidly growing to preserve a sustainable environment in the long term. For establishing effective policies, regulations, and implementation, DL can be a valuable tool for assessing environmental conditions and natural resources that will positively impact the ecosystem. This paper presents the assessment of land use and land cover change detection (LULCCD) and prediction using DL techniques for the southwestern coastal region, Goa, also known as the tourist destination of India. It consists of three components: (i) change detection (CD), (ii) quantification of LULC changes, and (iii) prediction. A new CD assessment framework, Spatio-Temporal Encoder-Decoder Self Attention Network (STEDSAN), is proposed for the LULCCD process. A dual branch encoder-decoder network is constructed using strided convolution with downsampling for the encoder and transpose convolution with upsampling for the decoder to assess the bitemporal images spatially. The self-attention (SA) mechanism captures the complex global spatial-temporal (ST) interactions between individual pixels over space-time to produce more distinct features. Each branch accepts the LULC map of 2 years as one of its inputs to determine binary and multiclass changes among the bitemporal images. The STEDSAN model determines the patterns, trends, and conversion from one LULC type to another for the assessment period from 2005 to 2018. The binary change maps were also compared with the existing state of the art (SOTA) CD methods, with STEDSAN having an overall accuracy of 94.93%. The prediction was made using an recurrent neural network (RNN) known as long short term memory network (LSTM) for the year 2025. Experiments were conducted to determine area-wise changes in several LULC classes, such as built-up (BU), crops (kharif crop (KC), rabi crop (RC), zaid crop (ZC), double/triple (D/T C)), current fallow (CF), plantation (PL), forests (evergreen forest (EF), deciduous forest (DF), degraded/scurb forest (D/SF)), littoral swamp (LS), grassland (GL), wasteland (WL), waterbodies max (Wmx), and waterbodies min (Wmn). As per the analysis, over the period of 13 years, there has been a net increase in the amount of BU (1.25%), RC (1.17%), and D/TC(2.42%) and a net decrease in DF (3.29%) and WL(1.44%) being the most dominant classes being changed. These findings will offer a thorough description of identifying trends in coastal areas that may incorporate methodological hints for future studies. This study will also promote handling the spatial and temporal complexity of remotely sensed data employed in categorizing the coastal LULC of a heterogeneous landscape. © The Author(s), under exclusive licence to Springer Nature Switzerland AG 2024.
dc.identifier.citationEnvironmental Monitoring and Assessment, 2024, 196, 6, pp. -
dc.identifier.issn1676369
dc.identifier.urihttps://doi.org/10.1007/s10661-024-12598-y
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/21086
dc.publisherSpringer Science and Business Media Deutschland GmbH
dc.subjectChange detection
dc.subjectCoastal zones
dc.subjectConvolution
dc.subjectDecoding
dc.subjectEnvironmental regulations
dc.subjectForecasting
dc.subjectLand use
dc.subjectLong short-term memory
dc.subjectNetwork coding
dc.subjectTime series
dc.subjectChange map
dc.subjectChange prediction
dc.subjectCoastal regions
dc.subjectEncoder-decoder
dc.subjectLand use and land cover
dc.subjectLand use and land cover change
dc.subjectLearning techniques
dc.subjectSelf-attention
dc.subjectSpatio-temporal
dc.subjectCrops
dc.subjectartificial neural network
dc.subjectassessment method
dc.subjectcoastal zone
dc.subjectdetection method
dc.subjectland cover
dc.subjectland use change
dc.subjectmachine learning
dc.subjectmapping method
dc.subjectpixel
dc.subjectprediction
dc.subjectremote sensing
dc.subjectsatellite data
dc.subjectspatiotemporal analysis
dc.subjectArticle
dc.subjectclimate change
dc.subjectdeep learning
dc.subjectenvironmental monitoring
dc.subjectgenetic algorithm
dc.subjectimage segmentation
dc.subjectland use
dc.subjectlearning
dc.subjectlearning algorithm
dc.subjectmarine environment
dc.subjectsea surface temperature
dc.subjectsensitivity analysis
dc.subjectsupport vector machine
dc.subjecttelecommunication
dc.subjectagriculture
dc.subjectecosystem
dc.subjectenvironmental protection
dc.subjectIndia
dc.subjectprocedures
dc.subjectGoa
dc.subjectAgriculture
dc.subjectConservation of Natural Resources
dc.subjectDeep Learning
dc.subjectEcosystem
dc.subjectEnvironmental Monitoring
dc.titleAssessment of land use and land cover change detection and prediction using deep learning techniques for the southwestern coastal region, Goa, India

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