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Survey of Autonomous Vehicles’ Collision Avoidance Algorithms

Since the field of autonomous vehicles is developing quickly, it is becoming increasingly crucial for them to safely and effectively navigate their surroundings to avoid collisions. The primary collision avoidance algorithms currently employed by self-driving cars are examined in this thorough surve...

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Bibliographic Details
Published in:Sensors (Basel, Switzerland) Switzerland), 2025-01, Vol.25 (2), p.395
Main Authors: Hamidaoui, Meryem, Talhaoui, Mohamed Zakariya, Li, Mingchu, Midoun, Mohamed Amine, Haouassi, Samia, Mekkaoui, Djamel Eddine, Smaili, Abdelkarim, Cherraf, Amina, Benyoub, Fatima Zahra
Format: Article
Language:English
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Summary:Since the field of autonomous vehicles is developing quickly, it is becoming increasingly crucial for them to safely and effectively navigate their surroundings to avoid collisions. The primary collision avoidance algorithms currently employed by self-driving cars are examined in this thorough survey. It looks into several methods, such as sensor-based methods for precise obstacle identification, sophisticated path-planning algorithms that guarantee cars follow dependable and safe paths, and decision-making systems that allow for adaptable reactions to a range of driving situations. The survey also emphasizes how Machine Learning methods can improve the efficacy of obstacle avoidance. Combined, these techniques are necessary for enhancing the dependability and safety of autonomous driving systems, ultimately increasing public confidence in this game-changing technology.
ISSN:1424-8220
1424-8220
DOI:10.3390/s25020395