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Mohammed A. Quddus

Researcher at Loughborough University

Publications -  197
Citations -  11373

Mohammed A. Quddus is an academic researcher from Loughborough University. The author has contributed to research in topics: Poison control & Map matching. The author has an hindex of 47, co-authored 181 publications receiving 9421 citations. Previous affiliations of Mohammed A. Quddus include National University of Singapore & Imperial College London.

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The statistical analysis of highway crash-injury severities: a review and assessment of methodological alternatives.

TL;DR: This paper summarizes the evolution of research and current thinking as it relates to the statistical analysis of motor-vehicle injury severities, and provides a discussion of future methodological directions.
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Current map-matching algorithms for transport applications: State-of-the art and future research directions

TL;DR: The constraints and limitations of existing map matching algorithms are uncovered by an in-depth literature review and some ideas for monitoring the integrity of map-matching algorithms are presented.
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Real-time motion planning methods for autonomous on-road driving: State-of-the-art and future research directions

Abstract: Currently autonomous or self-driving vehicles are at the heart of academia and industry research because of its multi-faceted advantages that includes improved safety, reduced congestion, lower emissions and greater mobility. Software is the key driving factor underpinning autonomy within which planning algorithms that are responsible for mission-critical decision making hold a significant position. While transporting passengers or goods from a given origin to a given destination, motion planning methods incorporate searching for a path to follow, avoiding obstacles and generating the best trajectory that ensures safety, comfort and efficiency. A range of different planning approaches have been proposed in the literature. The purpose of this paper is to review existing approaches and then compare and contrast different methods employed for the motion planning of autonomous on-road driving that consists of (1) finding a path, (2) searching for the safest manoeuvre and (3) determining the most feasible trajectory. Methods developed by researchers in each of these three levels exhibit varying levels of complexity and performance accuracy. This paper presents a critical evaluation of each of these methods, in terms of their advantages/disadvantages, inherent limitations, feasibility, optimality, handling of obstacles and testing operational environments. Based on a critical review of existing methods, research challenges to address current limitations are identified and future research directions are suggested so as to enhance the performance of planning algorithms at all three levels. Some promising areas of future focus have been identified as the use of vehicular communications (V2V and V2I) and the incorporation of transport engineering aspects in order to improve the look-ahead horizon of current sensing technologies that are essential for planning with the aim of reducing the total cost of driverless vehicles. This critical review on planning techniques presented in this paper, along with the associated discussions on their constraints and limitations, seek to assist researchers in accelerating development in the emerging field of autonomous vehicle research.
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A general map matching algorithm for transport telematics applications

TL;DR: The algorithm is used together with the outputs of an extended Kalman filter formulation for the integration of GPS and dead reckoning data, and a spatial digital database of the road network, to provide continuous, accurate and reliable vehicle location on a given road segment.
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Applying the random effect negative binomial model to examine traffic accident occurrence at signalized intersections

TL;DR: The random effect negative binomial (RENB) model is applied to investigate the relationship between accident occurrence and the geometric, traffic and control characteristics of signalized intersections in Singapore and showed that 11 variables significantly affected the safety at the intersections.