3D Object Detection
3D object detection aims to accurately identify and locate objects within three-dimensional space, primarily using sensor data like LiDAR and cameras. Current research emphasizes improving accuracy and efficiency through advanced model architectures such as PointPillars, transformers, and Gaussian splatting, often incorporating multimodal fusion techniques and active learning strategies to reduce annotation costs. This field is crucial for autonomous driving, robotics, and augmented reality, with ongoing efforts focused on enhancing robustness, generalization across diverse datasets, and reducing computational demands for real-time applications.
Papers
LiDAR-BEVMTN: Real-Time LiDAR Bird's-Eye View Multi-Task Perception Network for Autonomous Driving
Sambit Mohapatra, Senthil Yogamani, Varun Ravi Kumar, Stefan Milz, Heinrich Gotzig, Patrick Mäder
RCM-Fusion: Radar-Camera Multi-Level Fusion for 3D Object Detection
Jisong Kim, Minjae Seong, Geonho Bang, Dongsuk Kum, Jun Won Choi
Ada3D : Exploiting the Spatial Redundancy with Adaptive Inference for Efficient 3D Object Detection
Tianchen Zhao, Xuefei Ning, Ke Hong, Zhongyuan Qiu, Pu Lu, Yali Zhao, Linfeng Zhang, Lipu Zhou, Guohao Dai, Huazhong Yang, Yu Wang
Comparative study of subset selection methods for rapid prototyping of 3D object detection algorithms
Konrad Lis, Tomasz Kryjak
GMM: Delving into Gradient Aware and Model Perceive Depth Mining for Monocular 3D Detection
Weixin Mao, Jinrong Yang, Zheng Ge, Lin Song, Hongyu Zhou, Tiezheng Mao, Zeming Li, Osamu Yoshie