We study the problem of using active learning to reduce annotation effort in training object detectors. Existing efforts in this space ignore the fact that image annotation costs are variable, depending on the number of objects present in a single image. In this regard, we examine a fine-grained sampling based approach for active learning in object detection. Over an unlabeled pool of images, our method aims to selectively pick the most informative subset of bounding boxes (as opposed to full images) to query an annotator. We measure annotation efforts in terms of the number of ground truth bounding boxes obtained. We study the effects of our method on the Feature Pyramid Network and RetinaNet models, and show promising savings in labeling ...
Supervised object detection has been proven to be successful in many benchmark datasets achieving hu...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...
While there have been extensive applications deploying object detection, one of its limitations is t...
Active learning approaches in computer vision generally involve querying strong labels for data. How...
Active learning and crowdsourcing are promising ways to efficiently build up training sets for objec...
We address the problem of training Object Detection models using significantly less bounding box ann...
One of the most labor intensive aspects of developing ac- curate visual object detectors using mach...
Active learning approaches in computer vision generally involve querying strong labels for data. How...
In this work, we present a novel active learning approach for learning a visual object detection sys...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
International audienceObject detectors trained with weak annotations are affordable alternatives to ...
Manual annotation of bounding boxes for object detection in digital images is tedious, and time and ...
Manual annotation of bounding boxes for object detection in digital images is tedious, and time and ...
Supervised object detection has been proven to be successful in many benchmark datasets achieving hu...
Supervised object detection has been proven to be successful in many benchmark datasets achieving hu...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...
While there have been extensive applications deploying object detection, one of its limitations is t...
Active learning approaches in computer vision generally involve querying strong labels for data. How...
Active learning and crowdsourcing are promising ways to efficiently build up training sets for objec...
We address the problem of training Object Detection models using significantly less bounding box ann...
One of the most labor intensive aspects of developing ac- curate visual object detectors using mach...
Active learning approaches in computer vision generally involve querying strong labels for data. How...
In this work, we present a novel active learning approach for learning a visual object detection sys...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
International audienceObject detectors trained with weak annotations are affordable alternatives to ...
Manual annotation of bounding boxes for object detection in digital images is tedious, and time and ...
Manual annotation of bounding boxes for object detection in digital images is tedious, and time and ...
Supervised object detection has been proven to be successful in many benchmark datasets achieving hu...
Supervised object detection has been proven to be successful in many benchmark datasets achieving hu...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...