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Mohamed Aly

Researcher at California Institute of Technology

Publications -  30
Citations -  2258

Mohamed Aly is an academic researcher from California Institute of Technology. The author has contributed to research in topics: Image retrieval & Wireless sensor network. The author has an hindex of 14, co-authored 30 publications receiving 1987 citations. Previous affiliations of Mohamed Aly include Cairo University & Google.

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Proceedings ArticleDOI

Real time detection of lane markers in urban streets

TL;DR: In this paper, a robust and real-time approach to lane marker detection in urban streets is presented, which is based on generating a top view of the road, filtering using selective oriented Gaussian filters, using RANSAC line fitting to give initial guesses to a new and fast RANAC algorithm for fitting Bezier Splines, which was then followed by a post-processing step.
Proceedings ArticleDOI

Real time Detection of Lane Markers in Urban Streets

TL;DR: A robust and real time approach to lane marker detection in urban streets based on generating a top view of the road, filtering using selective oriented Gaussian filters, using RANSAC line fitting to give initial guesses to a new and fast RansAC algorithm for fitting Bezier Splines, which is then followed by a post-processing step.
Proceedings ArticleDOI

ASTD: Arabic Sentiment Tweets Dataset

TL;DR: ASTD, an Arabic social sentiment analysis dataset gathered from Twitter, consists of about 10,000 tweets which are classified as objective, subjective positive, subjective negative, and subjective mixed.
Proceedings Article

LABR: A Large Scale Arabic Book Reviews Dataset

TL;DR: The LABR dataset as mentioned in this paper consists of over 63,000 book reviews, each rated on a scale of 1 to 5 stars, and is used for sentiment polarity classification and rating classification.

Distributed Kd-Trees for Retrieval from Very Large Image Collections

TL;DR: This work employs the MapReduce architecture to efficiently build and distribute the Kd-Tree for millions of images, and provides orders of magnitude more throughput than the state-of-the-art, with better recognition performance.