| |||||||||||||
ACM TSAS DL 2019 : ACM TSAS - Special issue on Deep Learning for Spatial Algorithms and Systems | |||||||||||||
| |||||||||||||
Call For Papers | |||||||||||||
CALL FOR PAPERS
ACM Transactions on Spatial Algorithms and Systems Special issue on Deep Learning for Spatial Algorithms and Systems Special Issue Guest Editors: Moustafa Youssef: Alexandria University, Egypt John Krumm: Microsoft Research, USA Muhammad Aamir Cheema: Monash University, Australia Aim and Scope The availability of both large-scale datasets as well as the advances in graphical processing units (GPUs) has paved the way to the recent breakthroughs in the deep learning field. This in turn has led to unprecedented accuracy in various applications of machine learning such as image recognition, natural language processing, and machine translation, among others. Spatio-temporal data sets are naturally large due to the wide extent in both space and time. Hence, approaches based on deep learning are well suited to systems designed to process spatio-temporal data. This special issue on Deep Learning for Spatial Algorithms and Systems will be published in ACM Transactions on Spatial Algorithms and Systems (TSAS). The guest editors target covering various deep-learning algorithms and systems applied to spatial data processing. Topics of interest include (but are not limited to) applications of deep learning to: Big Spatial Data Location Privacy, Data Sharing and Security Mobile Systems and Vehicular Ad Hoc Networks Spatio-Temporal Data Analysis Spatial Data Mining and Knowledge Discovery Spatial Data Quality and Uncertainty Spatio-Temporal Sensor Networks Spatio-Temporal Stream Processing Spatio-Textual Searching Location-Based Services Location Tracking Algorithms Traffic Telematics Urban and Environmental Planning Crowdsourcing Spatial Data Geographic Information Retrieval Connected Cars, Intelligent Transportation Systems, Smart Spaces Mobile Data Analytics Behavioral/Activity Sensing and Analytics Location-Based Social Networks Location and Trajectory Analytics Innovative Applications Driven by Spatial Data The journal welcomes original articles on any of the above topics or closely related disciplines in the context of deep learning for spatial algorithms and systems. TSAS will encourage original submissions that have not been published or submitted in any form elsewhere, and submissions which may significantly contribute to opening up new and potentially important areas of research and development. TSAS will publish outstanding papers that are "major value-added extensions" of papers previously published in conferences. These extensions should contribute at least 30% new original work. In this case, authors will need to identify in a separate document the list of extensions over their previously published paper. For more information, please visit https://tsas.acm.org/authors.cfm. Important Dates May 1, 2019: Deadline for submissions of full-length papers Aug 1, 2019: Notification of initial reviews Sep 1, 2019: Deadline for revisions Dec 1, 2019: Notification of final reviews Jan 1, 2020: Submission of final camera-ready manuscripts Mar 1, 2020: Expected publication For further information, please contact the guest editors at deep-learning-editors@acm.org. |
|