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Automatic Transmitter Identification System (television)
Known as:
ATIS
, Automatic Transmitter Identification System
The Automatic Transmitter Identification System (ATIS) is a communications protocol used for the station identification of television channels…
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Related topics
Related topics
14 relations
Airchain
Communications protocol
Decibel
Frequency coordination
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Broader (1)
Broadcast engineering
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2010
2010
Prediction of short-term average vehicular velocity considering weather factors in urban VANET environments
Jyun-Yan Yang
,
Li-Der Chou
,
+5 authors
Shu-Ping Lu
International Conference on Machine Learning and…
2010
Corpus ID: 25638539
Recently, accurate prediction of short-term traffic flow is crucial to proactive traffic management systems in ITS; however, the…
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Highly Cited
2004
Highly Cited
2004
A Travel Time Prediction Algorithm Scalable to Freeway Networks with Many Nodes with Arbitrary Travel Routes
Jaimyoung Kwon
,
K. Petty
2004
Corpus ID: 2893244
A travel time prediction algorithm scalable to large freeway networks with many nodes with arbitrary travel routes is proposed…
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2000
2000
Distributed Database Design for Mobile Geographical Applications
M. Choy
,
M. Kwan
,
H. Leong
Journal of Database Management
2000
Corpus ID: 13889583
Advanced Traveler Information Systems (ATIS) require efficient information retrieval and updating in a dynamic environment at…
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Highly Cited
1997
Highly Cited
1997
A DOP Model for Semantic Interpretation
R. Bonnema
,
R. Bod
,
R. Scha
Annual Meeting of the Association for…
1997
Corpus ID: 14905234
In data-oriented language processing, an annotated language corpus is used as a stochastic grammar. The most probable analysis of…
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Highly Cited
1997
Highly Cited
1997
Word-based confidence measures as a guide for stack search in speech recognition
C. Neti
,
S. Roukos
,
E. Eide
IEEE International Conference on Acoustics…
1997
Corpus ID: 12243571
The maximum a posteriori hypothesis is treated as the decoded truth in speech recognition. However, since the word recognition…
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1996
1996
A stochastic case frame approach for natural language understanding
W. Minker
,
S. Bennacef
,
J. Gauvain
Proceeding of Fourth International Conference on…
1996
Corpus ID: 11278631
A stochastically based approach for the semantic analysis component of a natural spoken language system for the ARPA Air Travel…
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Highly Cited
1996
Highly Cited
1996
Language understanding using hidden understanding models
R. Schwartz
,
Scott Miller
,
D. Stallard
,
J. Makhoul
Proceeding of Fourth International Conference on…
1996
Corpus ID: 6105536
Describes a sentence understanding system that is completely based on learned methods both for understanding individual sentences…
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1995
1995
The Problem of Computing the Most Probable Tree in Data-Oriented Parsing and Stochastic Tree Grammars
Rens Bad
Conference of the European Chapter of the…
1995
Corpus ID: 6806585
We deal with the question as to whether there exists a polynomial time algorithm for computing the most probable parse tree of a…
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Highly Cited
1994
Highly Cited
1994
DEVELOPMENT AND TESTING OF DYNAMIC TRAFFIC ASSIGNMENT AND SIMULATION PROCEDURES FOR ATIS/ATMS APPLICATIONS
H. Mahmassani
1994
Corpus ID: 115027691
Highly Cited
1991
Highly Cited
1991
Interactive Problem Solving and Dialogue in the ATIS Domain
S. Seneff
,
L. Hirschman
,
V. Zue
Human Language Technology - The Baltic Perspectiv
1991
Corpus ID: 20221519
This paper describes the present status of the discourse and dialogue models within the MIT ATIS system, extended to support the…
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