首页 /研究 /Small Object Detection in Traffic Scenes for Mobile Robots: Challenges, Strategies, and Future Directions
PERCEPTION

Small Object Detection in Traffic Scenes for Mobile Robots: Challenges, Strategies, and Future Directions

Zhe Wei, Yurong Zou, Haibo Xu

发表年份
2025
引用次数
6
访问权限
开放获取

摘要

Small object detection in traffic scenes presents unique challenges for mobile robots operating under constrained computational resources and highly dynamic environments. Unlike general object detection, small targets often suffer from low resolution, weak semantic cues, and frequent occlusion, especially in complex outdoor scenarios. This study systematically analyses the challenges, technical advances, and deployment strategies for small object detection tailored to mobile robotic platforms. We categorise existing approaches into three main strategies: feature enhancement (e.g., multi-scale fusion, attention mechanisms), network architecture optimisation (e.g., lightweight backbones, anchor-free heads), and data-driven techniques (e.g., augmentation, simulation, transfer learning). Furthermore, we examine deployment techniques on embedded devices such as Jetson Nano and Raspberry Pi, and we highlight multi-modal sensor fusion using Light Detection and Ranging (LiDAR), cameras, and Inertial Measurement Units (IMUs) for enhanced environmental perception. A comparative study of public datasets and evaluation metrics is provided to identify current limitations in real-world benchmarking. Finally, we discuss future directions, including robust detection under extreme conditions and human-in-the-loop incremental learning frameworks. This research aims to offer a comprehensive technical reference for researchers and practitioners developing small object detection systems for real-world robotic applications.

关键词

Mobile robotComputer scienceRobotArtificial intelligenceObject detectionHuman–computer interactionComputer visionTransport engineeringEngineeringPattern recognition (psychology)

相关论文

查看 PERCEPTION 分类全部论文