Obstacle Detection
Obstacle detection aims to identify objects obstructing a path, crucial for safe navigation in various applications, from autonomous vehicles and robots to assistive technologies for the visually impaired. Current research emphasizes robust detection across diverse environments and conditions, employing various approaches including deep learning models (like Transformers and YOLO variants), spiking neural networks, and sensor fusion (e.g., camera-radar). These advancements are significantly impacting fields like autonomous navigation, robotics, and assistive technology by improving safety, efficiency, and accessibility.
Papers
Dynamic Control Barrier Function-based Model Predictive Control to Safety-Critical Obstacle-Avoidance of Mobile Robot
Zhuozhu Jian, Zihong Yan, Xuanang Lei, Zihong Lu, Bin Lan, Xueqian Wang, Bin Liang
StereoVoxelNet: Real-Time Obstacle Detection Based on Occupancy Voxels from a Stereo Camera Using Deep Neural Networks
Hongyu Li, Zhengang Li, Neset Unver Akmandor, Huaizu Jiang, Yanzhi Wang, Taskin Padir