This paper proposes a novel self-learning framework, which converts a noisy, pre-labeled multi-class object dataset into a purified multi-class object dataset with object bounding-box annotations, by iteratively removing noise samples from the low-quality dataset, which may contain a high level of inter-class noise samples. The framework iteratively purifies the noisy training datasets for each class and updates the classification model for multiple classes. The procedure starts with a generic single-class object model which changes to a multi-class model in an iterative procedure of which the F-1 score is evaluated to reach a sufficiently high score. The proposed framework is based on learning the used models with CNNs. As a result, we obt...
Training deep neural networks (DNNs) with noisy labels often leads to poorly generalized models as D...
When the training data is inadequate, it is difficult to train a deep Convolutional Neural Network (...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
This paper proposes a novel self-learning framework, which converts a noisy, pre-labeled multi-class...
This paper proposes a novel self-learning framework, which converts a noisy, pre-labeled multi-class...
Exploiting ConvNets for object classification systems requires extensive labor work, since these net...
With the recent development in ConvNet-based detectors, a successful solution for vessel detection b...
Machine learning and specifically deep learning techniques address many of the issues faced in visua...
Our purpose in this work is to boost the performance of object classifiers learned using the self-tr...
ABSTRACT: Visual object detection is an artificial intelligence technique that locates specific obje...
Multi-class classification is the classification task where separates samples into more than 2 class...
Reliable multitype and orientation vessel detection is of vital importance for maritime surveillance...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
Deep learning based object detection methods have achieved promising performance in controlled envir...
Training deep neural networks (DNNs) with noisy labels often leads to poorly generalized models as D...
When the training data is inadequate, it is difficult to train a deep Convolutional Neural Network (...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
This paper proposes a novel self-learning framework, which converts a noisy, pre-labeled multi-class...
This paper proposes a novel self-learning framework, which converts a noisy, pre-labeled multi-class...
Exploiting ConvNets for object classification systems requires extensive labor work, since these net...
With the recent development in ConvNet-based detectors, a successful solution for vessel detection b...
Machine learning and specifically deep learning techniques address many of the issues faced in visua...
Our purpose in this work is to boost the performance of object classifiers learned using the self-tr...
ABSTRACT: Visual object detection is an artificial intelligence technique that locates specific obje...
Multi-class classification is the classification task where separates samples into more than 2 class...
Reliable multitype and orientation vessel detection is of vital importance for maritime surveillance...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
Deep learning based object detection methods have achieved promising performance in controlled envir...
Training deep neural networks (DNNs) with noisy labels often leads to poorly generalized models as D...
When the training data is inadequate, it is difficult to train a deep Convolutional Neural Network (...
In many domains, collecting sufficient labeled training data for supervised machine learning require...