A novel method for creating diverse ensembles of image classifiers is proposed. The idea is that, for each base image classifier in the ensemble, a random image transformation is generated and applied to all of the images in the labeled training set. The base classifiers are then learned using features extracted from these randomly transformed versions of the training data, and the result is a highly diverse ensemble of image classifiers. This approach is evaluated on a benchmark pedestrian detection dataset and shown to be effective
Classification is a special type of machine learning tasks, which is essentially achieved by trainin...
In real world situations every model has some weaknesses and will make errors on training data. Give...
Ensemble learning is a popular and intensively studied field in machine learning and pattern recogni...
A novel method for creating diverse ensembles of image classifiers is proposed. The idea is that, fo...
While the quality of object recognition systems can strongly benefit from more data, human annotatio...
This paper considers the general problem of image classification without using any prior kn...
Image classification is a special type of classification tasks in the setting of supervised machine ...
Abstract This paper investigates the problem of semi-supe-rvised image classification and image clus...
none3In this paper we make an extensive study of different methods for building ensembles of classif...
In this paper, a new approach for pedestrian detection is presented. We design an ensemble of classi...
This paper presents an ensemble-SVM method that features a data selection mechanism with stochastic...
[EN]In the machine learning field, especially in classification tasks, the model's design and constr...
Ensemble classification is a classifier applied to improve the performance of the single classifiers...
This paper investigates the problem of semi-supervised classification. Unlike previous methods to re...
In this work, a new ensemble method for the task of category recognition in different environments i...
Classification is a special type of machine learning tasks, which is essentially achieved by trainin...
In real world situations every model has some weaknesses and will make errors on training data. Give...
Ensemble learning is a popular and intensively studied field in machine learning and pattern recogni...
A novel method for creating diverse ensembles of image classifiers is proposed. The idea is that, fo...
While the quality of object recognition systems can strongly benefit from more data, human annotatio...
This paper considers the general problem of image classification without using any prior kn...
Image classification is a special type of classification tasks in the setting of supervised machine ...
Abstract This paper investigates the problem of semi-supe-rvised image classification and image clus...
none3In this paper we make an extensive study of different methods for building ensembles of classif...
In this paper, a new approach for pedestrian detection is presented. We design an ensemble of classi...
This paper presents an ensemble-SVM method that features a data selection mechanism with stochastic...
[EN]In the machine learning field, especially in classification tasks, the model's design and constr...
Ensemble classification is a classifier applied to improve the performance of the single classifiers...
This paper investigates the problem of semi-supervised classification. Unlike previous methods to re...
In this work, a new ensemble method for the task of category recognition in different environments i...
Classification is a special type of machine learning tasks, which is essentially achieved by trainin...
In real world situations every model has some weaknesses and will make errors on training data. Give...
Ensemble learning is a popular and intensively studied field in machine learning and pattern recogni...