Khaled S. Refaat
University of California, Los Angeles
21 Papers
44 Citations
Khaled S. Refaat is an academic researcher from University of California, Los Angeles. The author has contributed to research in topics: Bayesian network & Kernel method. The author has an hindex of 5, co-authored 21 publications. Previous affiliations of Khaled S. Refaat include Cairo University & Centre national de la recherche scientifique.
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Papers
•Posted Content
MultiPath++: Efficient Information Fusion and Trajectory Aggregation for Behavior Prediction
Balakrishnan Varadarajan,Ahmed Hefny,Avikalp Srivastava,Khaled S. Refaat,Nigamaa Nayakanti,Andre Cornman,Kan Chen,Bertrand Douillard,Chi Pang Lam,Dragomir Anguelov,Benjamin Sapp +10 more
TL;DR: MultiPath++ as discussed by the authors improves the MultiPath architecture by revisiting many design choices and proposes a context-aware fusion of these elements and develops a reusable multi-context gating fusion component.
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Agent Prioritization for Autonomous Navigation
Khaled S. Refaat,Kai Ding,Natalia Ponomareva,Stephane Ross +3 more
- 01 Nov 2019
TL;DR: In this paper, the authors propose a system to rank agents around an autonomous vehicle (AV) in real-time by automatically generating a ranking data set by running the planner in simulation on real-world logged data, where they can afford to run more accurate and expensive models on all the agents.
•Proceedings Article
Using Semantic Features to Detect Spamming in Social Bookmarking Systems
Amgad Madkour,Tarek Hefni,Ahmed Hefny,Khaled S. Refaat +3 more
- 01 May 2008
TL;DR: Potential features that describe the system’s users are discussed and it is illustrated how to use those features in order to determine potential spamming users through various machine learning models.
15
A new approach for context-independent handwritten offline diagram recognition using support vector machines
Khaled S. Refaat,W.N. Helmy,A.H. Ali,M.S. AbdelGhany,Amir F. Atiya +4 more
- 01 Jun 2008
TL;DR: The objective of this paper is to propose a context-independent off-line diagram recognition system that utilizes support vector machines for recognition and line primitive extraction by interpretation of line continuation for segmentation.
15
•Posted Content
Agent Prioritization for Autonomous Navigation
TL;DR: This work proposes a system to rank agents around an autonomous vehicle (AV) in real time, and shows the utility of combining learned features, via a convolutional neural network, with engineered features designed to capture domain knowledge.
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