首页> 外文会议>Asian conference on remote sensingACRS >DEVELOPMENT OF DATA-DRIVEN MODEL USING BAYESIAN STATISTICS, AND REMOTE SENSING TECHNIQUES FOR CONSTRUING NONLINEARITY IN LULC TRANSFORMATIONS
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DEVELOPMENT OF DATA-DRIVEN MODEL USING BAYESIAN STATISTICS, AND REMOTE SENSING TECHNIQUES FOR CONSTRUING NONLINEARITY IN LULC TRANSFORMATIONS

机译:利用贝叶斯统计的数据驱动模型的开发,以及用于在LULC变换中解除非线性的遥感技术

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Machine learning techniques help in construing the complexities of combinatorial analyses. Application of these techniques helps in assessing the significance of causal factors on spatial events. This work attempts to identify the hotspots of possible randomness in terms of land use / cover changes using machine learning and remote sensing techniques. Transformations in an urban landscape pattern are a consequence of congregation of different spatial and aspatial factors. Furthermore, there is a huge possibility that the characteristics of these factors may vary in spatio-temporal domain. Hence, it is difficult to investigate an urban event using a unidimensional approach. Non-linearity of urban events can be tackled using techniques which are effective in considering and representing the possible transitions of causal factors from one state to another with probabilistic / possibilistic values. Hence, Bayesian model is employed in this study using historical and current data sets. Firstly, the study area is segregated into different grids. Spatiotemporal assessment of land use / cover changes and transition of LULC class from one to another is performed for the years between 1992 and 2014 for each grid. Then, current landscape pattern is quantified using a proposed landscape indices termed as fuzzy-Shannon's heterogeneity index for different grids. It is developed by modifying conventional Shannon's heterogeneity index. The results obtained fromthe application of fuzzy-Shannon's heterogeneity indexand spatiotemporal assessment of LULC changes and transition of LULC class from one to another are fed into the Bayesian model to determine the land use/ cover changes hotspots. Results of the Bayesian model also help in identifying the factors which are the most significant actors in inducing randomness in LULC transformation. Hotspots obtained from the proposed model are witnessing unprecedented changes in LULC. Therefore, it can be inferred that results are in sync with the actual scenario.
机译:机器学习技术有助于限制组合分析的复杂性。这些技术的应用有助于评估因因素对空间事件的重要性。这项工作试图在使用机器学习和遥感技术的土地使用/掩护变化方面识别可能随机性的热点。城市景观格局的转变是不同空间和天空因素的会征的结果。此外,这些因素的特征可能在时空结构域中变化很大。因此,难以使用单向方法调查城市活动。可以使用有效的技术来解决城市事件的非线性,这些技术在考虑和代表从一个州的可能转变为概率/可能性值。因此,贝叶斯模型在本研究中使用了历史和当前数据集。首先,研究区域被隔离成不同的网格。对土地利用/覆盖的时空评估和Lulc类从一到另一个的Lulc类的转换是在1992年至2014年间的每年之间进行的。然后,使用所提出的景观指数定量当前的横向模式,被称为模糊香农的不同网格的异质性指数。它是通过修改传统的Shannon的异质性指数而开发的。从模糊库仑的异质性指数和Lulc类的延期评估获得的结果获得的结果从一个到另一个到另一个到另一个的Lulc类转变为贝塞尔模型,以确定土地使用/掩护变化热点。贝叶斯模型的结果也有助于识别诱导LULC转化中随机性最重要的参与者的因素。从拟议模型获得的热点正在寻求Lulc的前所未有的变化。因此,可以推断出结果与实际方案同步。

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