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Image-Based Object Detection Approaches to be Used in Embedded Systems for Robots Navigation

Ahmad Ali Deeb, Farah Shahhoud

Year
2022
Citations
2
Access
Open access

Abstract

This paper investigates the problem of object detection for real-time agents’ navigation using embedded systems. In real-world problems, a compromise between accuracy and speed must be found. In this paper, we consider a description of the architecture of different object detection algorithms, such as R-CNN and YOLO, to compare them on different variants of embedded systems using different datasets. As a result, we provide a trade-off study based on accuracy and speed for different object detection algorithms to choose the appropriate one depending on the specific application task.

Keywords

Computer scienceObject detectionArtificial intelligenceObject (grammar)Task (project management)ArchitectureRobotComputer visionViola–Jones object detection frameworkReal-time computing

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