We investigate different strategies for active learning with Bayesian deep neural networks. We focus our analysis on scenarios where new, unlabeled data is obtained episodically, such as commonly encountered in mobile robotics applications. An evaluation of different strategies for acquisition, updating, and final training on the CIFAR-10 dataset shows that incremental network updates with final training on the accumulated acquisition set are essential for best performance, while limiting the amount of required human labeling labor
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
The topic of this thesis is the combination of active learning strategies used in conjunction with ...
In active learning, the size and complexity of the training dataset changes over time. Simple models...
We investigate different strategies for active learning with Bayesian deep neural networks. We focus...
A primary hindrance to neural networks in robotic applications is data efficiency; collecting data o...
Deep learning models have demonstrated outstanding performance in several problems, but their traini...
Even though active learning forms an important pillar of machine learning, deep learning tools are n...
In the past few years, complex neural networks have achieved state of the art results in image class...
While learning from synthetic training data has recently gained an increased attention, in real-worl...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
Even though active learning forms an important pillar of machine learning, deep learning tools are n...
In this work we discuss the problem of active learning. We present an approach that is based on A-op...
Error-driven active learning in growing radial basis function networks for early robot learnin
In this paper, we describe a new error-driven active learning approach to self-growing radial basis ...
Copyright © 2010 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
The topic of this thesis is the combination of active learning strategies used in conjunction with ...
In active learning, the size and complexity of the training dataset changes over time. Simple models...
We investigate different strategies for active learning with Bayesian deep neural networks. We focus...
A primary hindrance to neural networks in robotic applications is data efficiency; collecting data o...
Deep learning models have demonstrated outstanding performance in several problems, but their traini...
Even though active learning forms an important pillar of machine learning, deep learning tools are n...
In the past few years, complex neural networks have achieved state of the art results in image class...
While learning from synthetic training data has recently gained an increased attention, in real-worl...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
Even though active learning forms an important pillar of machine learning, deep learning tools are n...
In this work we discuss the problem of active learning. We present an approach that is based on A-op...
Error-driven active learning in growing radial basis function networks for early robot learnin
In this paper, we describe a new error-driven active learning approach to self-growing radial basis ...
Copyright © 2010 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
The topic of this thesis is the combination of active learning strategies used in conjunction with ...
In active learning, the size and complexity of the training dataset changes over time. Simple models...