Computational approaches in spatial language understanding nowadays distinguish and use different aspects of spatial and contextual information. These aspects comprise linguistic grammatical features, qualitative formal representations, and situational context-aware data. In this chapter, we apply formal models and machine learning techniques to map spatial semantics in natural language to qualitative spatial representations. In particular, we investigate whether and how well linguistic features can be classified and automatically extracted and mapped to region-based qualitative relations using corpus-based learning. We separate the challenge of spatial language understanding into two tasks: (i) we identify and automatically extract those p...
Representation and reasoning with qualitative spatial relations is an important problem in artificia...
Abstract. We address the problem of relating natural language de-scriptions of spatial situations wi...
Automatically extracting spatial information is a challenging novel task with many applications. We ...
Abstract. Computational approaches in spatial language understanding distinguish and use dierent asp...
Abstract. We consider mapping unrestricted natural language to for-mal spatial representations. We d...
We consider mapping unrestricted natural language to formal spatial representations.We describe ongo...
What semantic structures can enable a system to understand and use spatial language in realistic sit...
Given the large body of the past research on various aspects of spatial information, the main obstac...
Given the large body of the past research on various aspects of spatial information, the main obstac...
Understanding spatial language is important in many applications such as geographical information sy...
We consider mapping unrestricted natural language to formal spatial representations.We describe ongo...
Understanding spatial language is important in many applications such as geographical information sy...
How languages are learned is one of the deepest mysteries of cognitive science. This question can be...
How languages are learned is one of the deepest mysteries of cognitive science. This question can be...
‘Qualitative spatial reasoning and representation’ is a range of techniques developed in Artificial ...
Representation and reasoning with qualitative spatial relations is an important problem in artificia...
Abstract. We address the problem of relating natural language de-scriptions of spatial situations wi...
Automatically extracting spatial information is a challenging novel task with many applications. We ...
Abstract. Computational approaches in spatial language understanding distinguish and use dierent asp...
Abstract. We consider mapping unrestricted natural language to for-mal spatial representations. We d...
We consider mapping unrestricted natural language to formal spatial representations.We describe ongo...
What semantic structures can enable a system to understand and use spatial language in realistic sit...
Given the large body of the past research on various aspects of spatial information, the main obstac...
Given the large body of the past research on various aspects of spatial information, the main obstac...
Understanding spatial language is important in many applications such as geographical information sy...
We consider mapping unrestricted natural language to formal spatial representations.We describe ongo...
Understanding spatial language is important in many applications such as geographical information sy...
How languages are learned is one of the deepest mysteries of cognitive science. This question can be...
How languages are learned is one of the deepest mysteries of cognitive science. This question can be...
‘Qualitative spatial reasoning and representation’ is a range of techniques developed in Artificial ...
Representation and reasoning with qualitative spatial relations is an important problem in artificia...
Abstract. We address the problem of relating natural language de-scriptions of spatial situations wi...
Automatically extracting spatial information is a challenging novel task with many applications. We ...