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    <pubDate>Fri, 24 May 2013 12:18:51 GMT</pubDate>
    <dc:date>2013-05-24T12:18:51Z</dc:date>
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      <title>Dealing with multimodal languages ambiguities : a classification and solution method</title>
      <link>http://hdl.handle.net/2307/521</link>
      <description>&lt;Title&gt;Dealing with multimodal languages ambiguities : a classification and solution method&lt;/Title&gt;
&lt;Authors&gt;Caschera, Maria Chiara&lt;/Authors&gt;
&lt;Issue Date&gt;2009-04-02&lt;/Issue Date&gt;
&lt;Abstract&gt;Starting from discussing the problem of ambiguity and its pervasiveness on&#xD;
communication processes,  this thesis dissertation faces problems of&#xD;
classifying and solving ambiguities for multimodal languages.&#xD;
This thesis gives an overview of the works proposed in literature about&#xD;
ambiguities in natural language and visual languages and discusses some&#xD;
existing proposals on multimodal ambiguities. An original classification of&#xD;
multimodal ambiguities has been defined using a linguistic perspective, &#xD;
introducing the notions of multimodal grammar,  multimodal sentence and&#xD;
multimodal language.&#xD;
An overview of methods that the literature proposes for avoiding and&#xD;
detecting ambiguities has been done. These methods are grouped into:&#xD;
prevention of ambiguities,  a-posterior resolution and approximation&#xD;
resolution methods. The analysis of these methods has underlined the&#xD;
suitability of Hidden Markov Models (HMMs) for disambiguation&#xD;
processes. However,  due to the complexity of ambiguities for multimodal&#xD;
interaction,  this thesis uses the Hierarchical Hidden Markov Models to&#xD;
manage the semantic and syntactic classes of ambiguities for multimodal&#xD;
sentences; this choice permits to operate at different levels going from the&#xD;
terminal elements to the multimodal sentence. The proposed methods for&#xD;
classifying and solving multimodal ambiguities have been used to design&#xD;
and implement two software modules. The experimental results of these&#xD;
modules have underlined a good level of accuracy during the classification&#xD;
and solution processes of multimodal ambiguities.&lt;/Abstract&gt;</description>
      <pubDate>Wed, 01 Apr 2009 22:00:00 GMT</pubDate>
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      <dc:date>2009-04-01T22:00:00Z</dc:date>
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