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teaching:projh402 [2020/10/01 11:59] mahmsakr [Distributed Moving Object Database on Amazon AWS] |
teaching:projh402 [2020/10/01 12:51] mahmsakr [Geospatial Trajectory Similarity Measure] |
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===== Geospatial Trajectory Data Cleaning ===== | ===== Geospatial Trajectory Data Cleaning ===== | ||
+ | Data cleaning is essential preprocessing for analysing the data and extracting meaningful insights. Real data will typically include outliers, inconsistencies, missing data, repeated transactions possibly with different keys, and other kinds of acquisition errors. In geospatial trajectory data, there are even more sources of error, such as GPS inaccuracies. | ||
+ | The goal of this project is to survey the state of the art in geospatial trajectory data cleaning, both model-based and machine learning. The work also includes prototyping and empirically evaluating a selection of these methods in the MobilityDB system, and on different real datasets. These outcomes should serve as a base for a thesis project to enhance geospatial trajectory data cleaning. | ||
===== Geospatial Trajectory Similarity Measure ===== | ===== Geospatial Trajectory Similarity Measure ===== | ||
+ | One of the main functions for a wide range of application domains is to measure the similarity between two moving objects' trajectories. This is desirable for similarity-based retrieval, classification, clustering and other querying and mining tasks over moving objects' data. The existing movement similarity measures can be classified into two classes: (1) spatial similarity that focuses on finding trajectories with similar geometric shapes, ignoring the temporal dimension; and (2) spatio-temporal similarity that takes into account both the spatial and the temporal dimensions of movement data. | ||
+ | The goal of this project is to survey and to prototype in MobilityDB the state of art methods in trajectory similarity. Since it is a complex problem, these outcomes should serve as a base for a thesis project to propose effective and efficient trajectory similarity measures. | ||
===== Spatiotemporal k-Nearest Neighbour (kNN) Queries ===== | ===== Spatiotemporal k-Nearest Neighbour (kNN) Queries ===== | ||