Quickly and cheaply finding areas of interest within an image can save computationally intensive image processing in a vision pipeline. Existing region proposal networks are either too general (finding all objects in an image) or too complex (providing fine-tuned bounding boxes for classification). We propose a straightforward region proposal network that simply scores parts of the image based on whether or not they contain an object of interest. This calculation can be carried out quickly and for many applications including autonomous driving only a small fraction of the image area may contain objects of interest. We trained our network on an autonomous robot soccer dataset with similar characteristics to the popular KITTI autonomous drivi...
Recent advances in 3D object detection are made by developing the refinement stage for voxel-based R...
Deep convolutional neural networks (DCNNs) are driving progress in object detection of high-resoluti...
Deep convolutional network models have dominated recent work in human action recognition as well as ...
Quickly and cheaply finding areas of interest within an image can save computationally intensive ima...
Quickly and cheaply finding areas of interest within an image can save computationally intensive ima...
Safety is crucial to the development and acceptance of assisted and highly automated driving functio...
Safety is crucial to the development and acceptance of assisted and highly automated driving functio...
© 2019 Elsevier B.V. Recently, significant progresses have been made in object detection on common b...
Today, there is a serious need to improve the performance of algorithms for detecting objects in ima...
Knowing where to look in an image can significantly improve performance in computer vision tasks by ...
We propose drl-RPN, a deep reinforcement learning-based visual recognition model consisting of a seq...
Locating and extracting useful data from images is a task that has been revolutionized in the last d...
Screening of aerial images covering large areas is important for many applications such as surveilla...
Locating and extracting useful data from images is a task that has been revolutionized in the last d...
Locating and extracting useful data from images is a task that has been revolutionized in the last d...
Recent advances in 3D object detection are made by developing the refinement stage for voxel-based R...
Deep convolutional neural networks (DCNNs) are driving progress in object detection of high-resoluti...
Deep convolutional network models have dominated recent work in human action recognition as well as ...
Quickly and cheaply finding areas of interest within an image can save computationally intensive ima...
Quickly and cheaply finding areas of interest within an image can save computationally intensive ima...
Safety is crucial to the development and acceptance of assisted and highly automated driving functio...
Safety is crucial to the development and acceptance of assisted and highly automated driving functio...
© 2019 Elsevier B.V. Recently, significant progresses have been made in object detection on common b...
Today, there is a serious need to improve the performance of algorithms for detecting objects in ima...
Knowing where to look in an image can significantly improve performance in computer vision tasks by ...
We propose drl-RPN, a deep reinforcement learning-based visual recognition model consisting of a seq...
Locating and extracting useful data from images is a task that has been revolutionized in the last d...
Screening of aerial images covering large areas is important for many applications such as surveilla...
Locating and extracting useful data from images is a task that has been revolutionized in the last d...
Locating and extracting useful data from images is a task that has been revolutionized in the last d...
Recent advances in 3D object detection are made by developing the refinement stage for voxel-based R...
Deep convolutional neural networks (DCNNs) are driving progress in object detection of high-resoluti...
Deep convolutional network models have dominated recent work in human action recognition as well as ...