Title of article :
Exploring Object Detection Methods for Autonomous Vehicles Perception: A Comparative Study of Classical and Deep Learning Approaches
Author/Authors :
Raisi ، Zobeir Electrical Engineering Department - Faculty of Marine Engineering - Chabahar Maritime University , Nazarzehi ، Valimohammad Electrical Engineering Department - Faculty of Marine Engineering - Chabahar Maritime University , Damani ، Rasoul Electrical Engineering Department - Faculty of Marine Engineering - Chabahar Maritime University , Sarani ، Esmaeil Electrical Engineering Department - Faculty of Marine Engineering - Chabahar Maritime University
From page :
249
To page :
261
Abstract :
This paper explores the performance of various object detection techniques for autonomous vehicle perception by analyzing classical machine learning and recent deep learning models. We evaluate three classical methods, including PCA, HOG, and HOG alongside different versions of the SVM classifier, and five deep-learning models, including Faster-RCNN, SSD, YOLOv3, YOLOv5, and YOLOv9 models using the benchmark INRIA dataset. The experimental results show that although classical methods such as HOG + Gaussian SVM outperform other classical approaches, they are outperformed by deep learning techniques. Furthermore, Classical methods have limitations in detecting partially occluded, distant objects and complex clothing challenges, while recent deep-learning models are more efficient and provide better performance (YOLOv9) on these challenges.
Keywords :
Vehicle Perception , Pedestrian detection , deep learning , classical Machine Learning , Histogram of Oriented Gradients
Journal title :
Journal of Artificial Intelligence and Data Mining
Journal title :
Journal of Artificial Intelligence and Data Mining
Record number :
2769480
Link To Document :
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