The success of state-of-the-art object detection methods depend heavily on the availability of a large amount of annotated image data. The raw image data available from various sources are abundant but non-annotated. Annotating image data is often costly, time-consuming or needs expert help. In this work, a new paradigm of learning called Active Learning is explored which uses user interaction to obtain annotations for a subset of the dataset. The goal of active learning is to achieve superior object detection performance with images that are annotated on demand. To realize active learning method, the trade-off between the effort to annotate (annotation cost) unlabeled data and the performance of object detection model is minimised. Rando...
Active learning is a label-efficient machine learning method that actively selects the most valuable...
While there have been extensive applications deploying object detection, one of its limitations is t...
For designing detectors for infrequently occurring objects in wide-area satellite imagery, we are fa...
The success of state-of-the-art object detection methods depend heavily on the availability of a lar...
We study the problem of using active learning to reduce annotation effort in training object detecto...
Active learning approaches in computer vision generally involve querying strong labels for data. How...
Efficient detection of multiple object instances is one of the fundamental challenges in computer vi...
In recent years, the rise of digital image and video data available has led to an increasing demand ...
Active learning approaches in computer vision generally involve querying strong labels for data. How...
Self-driving vehicles has become a hot topic in today's industry during the past years and companies...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...
International audienceAn active learning framework is introduced to deal with reducing the annotatio...
The labor-intensive and time-consuming process of annotating data is a serious bottleneck in many pa...
Statistical analysis and pattern recognition have become a daunting endeavour in face of the enormou...
In this paper, we deal with the problem of the annotation process in image analysis. This problem re...
Active learning is a label-efficient machine learning method that actively selects the most valuable...
While there have been extensive applications deploying object detection, one of its limitations is t...
For designing detectors for infrequently occurring objects in wide-area satellite imagery, we are fa...
The success of state-of-the-art object detection methods depend heavily on the availability of a lar...
We study the problem of using active learning to reduce annotation effort in training object detecto...
Active learning approaches in computer vision generally involve querying strong labels for data. How...
Efficient detection of multiple object instances is one of the fundamental challenges in computer vi...
In recent years, the rise of digital image and video data available has led to an increasing demand ...
Active learning approaches in computer vision generally involve querying strong labels for data. How...
Self-driving vehicles has become a hot topic in today's industry during the past years and companies...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...
International audienceAn active learning framework is introduced to deal with reducing the annotatio...
The labor-intensive and time-consuming process of annotating data is a serious bottleneck in many pa...
Statistical analysis and pattern recognition have become a daunting endeavour in face of the enormou...
In this paper, we deal with the problem of the annotation process in image analysis. This problem re...
Active learning is a label-efficient machine learning method that actively selects the most valuable...
While there have been extensive applications deploying object detection, one of its limitations is t...
For designing detectors for infrequently occurring objects in wide-area satellite imagery, we are fa...