This paper addresses the task of set prediction using deep learning. This is important because the output of many computer vision tasks, including image tagging and object detection, are naturally expressed as sets of entities rather than vectors. As opposed to a vector, the size of a set is not fixed in advance, and it is invariant to the ordering of entities within it. We define a likelihood for a set distribution and learn its parameters using a deep neural network. We also derive a loss for predicting a discrete distribution corresponding to set cardinality. Set prediction is demonstrated on the problem of multi-class image classification. Moreover, we show that the proposed cardinality loss can also trivially be applied to the tasks of...
<p>Increasingly, real world problems require multiple predictions while traditional supervised learn...
Distance-based nearest neighbours (dNN) queries and aggregations over their answer sets are importan...
Deep learning has attracted tremendous attention from researchers in various fields of information e...
We present a novel approach for learning to predict sets using deep learning. In recent years, deep ...
We present a novel approach for learning to predict sets using deep learning. In recent years, deep ...
Current approaches for predicting sets from feature vectors ignore the unordered nature of sets and ...
This paper proposes to learn features from sets of labeled raw images. With this method, the problem...
Abstract. Deep convolutional neural networks are currently applied to computer vision tasks, especia...
Deep Neural Networks (DNNs) have recently shown outstanding performance on image classification task...
Deep convolutional neural networks have recently achieved state-of-the-art performance on a number o...
The current trend in object detection and localization is to learn predictions with high capacity de...
© 2014 IEEE. We propose a deep learning framework for image set classification with application to f...
Safe deployment of deep neural networks in high-stake real-world applications require theoretically ...
The main result of this thesis is a deep learning model named BearNet, which can be trained to detec...
ABSTRACT Dataset in large collection involves considerable handling in its analysis especially whe...
<p>Increasingly, real world problems require multiple predictions while traditional supervised learn...
Distance-based nearest neighbours (dNN) queries and aggregations over their answer sets are importan...
Deep learning has attracted tremendous attention from researchers in various fields of information e...
We present a novel approach for learning to predict sets using deep learning. In recent years, deep ...
We present a novel approach for learning to predict sets using deep learning. In recent years, deep ...
Current approaches for predicting sets from feature vectors ignore the unordered nature of sets and ...
This paper proposes to learn features from sets of labeled raw images. With this method, the problem...
Abstract. Deep convolutional neural networks are currently applied to computer vision tasks, especia...
Deep Neural Networks (DNNs) have recently shown outstanding performance on image classification task...
Deep convolutional neural networks have recently achieved state-of-the-art performance on a number o...
The current trend in object detection and localization is to learn predictions with high capacity de...
© 2014 IEEE. We propose a deep learning framework for image set classification with application to f...
Safe deployment of deep neural networks in high-stake real-world applications require theoretically ...
The main result of this thesis is a deep learning model named BearNet, which can be trained to detec...
ABSTRACT Dataset in large collection involves considerable handling in its analysis especially whe...
<p>Increasingly, real world problems require multiple predictions while traditional supervised learn...
Distance-based nearest neighbours (dNN) queries and aggregations over their answer sets are importan...
Deep learning has attracted tremendous attention from researchers in various fields of information e...