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Book ChapterDOI

Modeling On-the-Spot Learning: Storage, Landmarks Weighting Heuristic and Annotation Algorithm

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TLDR
An OTSL model that includes the storage, retrieval and the landmark weighting heuristic is proposed that includes a weighting model to select the correct landmarks in the basic model and is extended to include other factors such as speed, direction, side of the road etc.
Abstract
Huge information is intrinsically associated with certain places in the globe such as historical, geographical, cultural and architectural specialties. The next generation systems require access of the site specific information where the user is roaming at the moment. The on-the-spot learning (OTSL) is a system that allows the users to learn about the location, landmarks, regions where he/she is walking through. In this paper, we have proposed an OTSL model that includes the storage, retrieval and the landmark weighting heuristic. Apart from learning about the individual landmarks, we have proposed two ways of storing the spatial learning objects. First, use the administrative hierarchy of the region to fetch the information. This can be easily done by the reverse-geocoding operation without actually storing the physical hierarchy. Second, spatial chunking, creates the region based on the groups of landmarks in order to define a learning region. A hybrid solution has also been considered to achieve the advantages of both the region based methods. We use a weighting model to select the correct landmarks in the basic model. We extend the core model to include other factors such as speed, direction, side of the road etc. A prototype has been implemented to show the feasibility of the proposed model.

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Citations
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Journal ArticleDOI

Popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference system

TL;DR: The proposed method maintains a registry to keep the information about the visited users, their stay time and the travel distance from their home location, and considers the fact that the higher stay in a place is an implicit measure of the greater likings.
References
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Journal ArticleDOI

Electronic mobile guides: a survey

TL;DR: This research paper attempts to categorize mobile tourist guides using a detailed set of evaluation criteria in order to extract design principles which can be used by application designers and developers.
Journal ArticleDOI

Experiential Hierarchies of Streets

TL;DR: A novel measure allowing to rank streets in a street network is introduced, derived from network connectivity measures, and takes into account the structure of the street network as well as the higher-order partition of the urban space into suburbs.
Journal ArticleDOI

Urban granularities--a data structure for cognitively ergonomic route directions

TL;DR: Levels of granularity in route directions are characterized as the result of the hierarchical organization of urban spatial knowledge as well as the theoretical underpinning of the core elements of the data structure and examples for its application.
Proceedings ArticleDOI

Mining GPS data to determine interesting locations

TL;DR: This paper aims to analyze aggregate GPS information of multiple users to mine a list of interesting locations and rank them, and shows the results of applying the methods on a large real life GPS dataset of sixty two users collected over a period of two years.
Proceedings ArticleDOI

Finding Regions of Interest from Trajectory Data

TL;DR: This work shows how to find regions of interest (ROIs) in trajectory databases using parameter independent methods, and generalizes ROIs to be regions of arbitrary shape of some predefined density.