Recent advances in 3D object detection are made by developing the refinement stage for voxel-based Region Proposal Networks (RPN) to better strike the balance between accuracy and efficiency. A popular approach among state-of-the-art frameworks is to divide proposals, or Regions of Interest (ROI), into grids and extract features for each grid location before synthesizing them to form ROI features. While achieving impressive performances, such an approach involves several hand-crafted components (e.g. grid sampling, set abstraction) which requires expert knowledge to be tuned correctly. This paper proposes a data-driven approach to ROI feature computing named APRO3D-Net which consists of a voxel-based RPN and a refinement stage made of Vecto...
Object detection is important in many applications, such as autonomous driving. While 2D images lack...
Over the past two years, 3D object detection has been a major area of focus across industry and acad...
Over the past two years, 3D object detection has been a major area of focus across industry and acad...
This thesis pursues the improvement of state-of-the-art 3D object detection and localization in the ...
The most recent 3D object detectors for point clouds rely on the coarse voxel-based representation r...
Three-dimensional object detection in the point cloud can provide more accurate object data for auto...
The goal of this paper is to generate high-quality 3D object proposals in the con-text of autonomous...
© 2019 Elsevier B.V. Recently, significant progresses have been made in object detection on common b...
Currently, existing state-of-the-art 3D object detectors are in two-stage paradigm. These methods ty...
Three-dimensional object detection can provide precise positions of objects, which can be beneficial...
Quickly and cheaply finding areas of interest within an image can save computationally intensive ima...
We propose drl-RPN, a deep reinforcement learning-based visual recognition model consisting of a seq...
Quickly and cheaply finding areas of interest within an image can save computationally intensive ima...
The design of 3D object detection schemes that use point clouds as input in automotive applications ...
Deep learning has achieved tremendous progress and success in processing images and natural language...
Object detection is important in many applications, such as autonomous driving. While 2D images lack...
Over the past two years, 3D object detection has been a major area of focus across industry and acad...
Over the past two years, 3D object detection has been a major area of focus across industry and acad...
This thesis pursues the improvement of state-of-the-art 3D object detection and localization in the ...
The most recent 3D object detectors for point clouds rely on the coarse voxel-based representation r...
Three-dimensional object detection in the point cloud can provide more accurate object data for auto...
The goal of this paper is to generate high-quality 3D object proposals in the con-text of autonomous...
© 2019 Elsevier B.V. Recently, significant progresses have been made in object detection on common b...
Currently, existing state-of-the-art 3D object detectors are in two-stage paradigm. These methods ty...
Three-dimensional object detection can provide precise positions of objects, which can be beneficial...
Quickly and cheaply finding areas of interest within an image can save computationally intensive ima...
We propose drl-RPN, a deep reinforcement learning-based visual recognition model consisting of a seq...
Quickly and cheaply finding areas of interest within an image can save computationally intensive ima...
The design of 3D object detection schemes that use point clouds as input in automotive applications ...
Deep learning has achieved tremendous progress and success in processing images and natural language...
Object detection is important in many applications, such as autonomous driving. While 2D images lack...
Over the past two years, 3D object detection has been a major area of focus across industry and acad...
Over the past two years, 3D object detection has been a major area of focus across industry and acad...