Search Results - (( developing geospatial data algorithm ) OR ( java application stemming algorithm ))
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Change detection on land surface temperature and land use land cover in Jelutong, Jelutong, Perak / Noor Ezlly Shafira Musselihat
Published 2023“…Advanced algorithms were used for LST extraction using Landsat 8 satellite data and Envi software version 5.3, and geospatial techniques were used for land use land cover classification. …”
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Student Project -
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Advanced data mining techniques for landslide susceptibility mapping
Published 2021“…Predictive models were also developed by quantifying these models using data mining techniques. …”
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Enhancing geographic coordinates representation standard for reverse geocoding web services
Published 2018“…Benchmarking the guidelines found the data is maintained within about 68% ± 1% of the original size without any algorithm compression. …”
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Thesis -
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Evaluation of land use land cover changes impacts on water quality at Nerus River using geospatial techniques / Noor Azzatul Najwa Azman
Published 2021“…Over the last 10 years, Nerus River was rapidly changing with new development and affect the water quality along the river. …”
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Geospatial Based Application for Dam Planning and Monitoring in Malaysia: A Review
Published 2024“…The advancement of dam monitoring involved the usage of geospatial technology such as satellite imagery data and Geographic Information System (GIS). …”
Book chapter -
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Geospatial AI-based approach to assess the spatiotemporal suitability of onshore wind-solar farms in Iraq
Published 2023“…In this context, global geospatial data for 13 conditioning factors were collected, and 55,619 inventory samples of wind and solar stations worldwide were prepared to train three machine learning (ML) algorithms, namely Random Forest (RF), Support Vector Machine (SVM), and Multi-Layer Perceptron (MLP). …”
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Thesis -
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Automatic filtering of far outliers in multibeam echo sounding dataset using robust detection algorithms
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Conference or Workshop Item -
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Route planner mobile web application for UiTM Malaysia / Suzana Ahmad ... [et al.]
Published 2009“…Djikstra’s algorithm together with Google Maps API and Google Earth, which are popular web mapping services providing geospatial data, have been used to develop, a prototype route planner.…”
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3D solid buffering for 3D GIS
Published 2007“…The primitives of objects such as point, line, and face will be addressed and integrated for the development of 3D solid buffering. The mathematics, the geometry, and the algorithms involved in the development will be presented. …”
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Conference or Workshop Item -
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Remote sensing technologies for unlocking new groundwater insights: a comprehensive review
Published 2024“…The evolution of the techniques analyses spans from empirical reliance on sparse point data to the assimilation of multi-platform satellite measurements using sophisticated machine learning algorithms. …”
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Article -
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Developing dengue index through the integration of crowdsourcing approach (X-Waba)
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Proceeding Paper -
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The impact of sea level rise on coastal region of Selangor, Malaysia / Muhammad Faiz Azemee
Published 2021“…The parameter used consists of bathymetry, currents speed, current direction and tidal data. Seawater prediction was determined by calculation using algorithm formula from (NAHRIM, 2010). …”
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Thesis -
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Google the earth: what's next?
Published 2010“…Considering the exponential growth of data volumes driven by the rapid progress in sensor and computer technologies in recent years, the future of remotely sensed data should ideally be in automated data processing, development of robust and transferable algorithms and processing chains that require little or no human intervention. …”
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Inaugural Lecture -
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