The ability to handle large scale variations is crucial for many real world visual tasks. A straightforward approach for handling scale in a deep network is to process an image at several scales simultaneously in a set of scale channels. Scale invariance can then, in principle, be achieved by using weight sharing between the scale channels together with max or average pooling over the outputs from the scale channels. The ability of such scale channel networks to generalise to scales not present in the training set over significant scale ranges has, however, not previously been explored. We, therefore, present a theoretical analysis of invariance and covariance properties of scale channel networks and perform an experimental evaluation of th...
This article presents a hybrid approach between scale-space theory and deep learning, where a deep l...
The diffused practice of pre-training Convolutional Neural Networks (CNNs) on large natural image da...
The diffused practice of pre-training Convolutional Neural Networks (CNNs) on large natural image da...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
This article presents a hybrid approach between scale-space theory and deep learning, where a deep l...
The diffused practice of pre-training Convolutional Neural Networks (CNNs) on large natural image da...
The diffused practice of pre-training Convolutional Neural Networks (CNNs) on large natural image da...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
This article presents a hybrid approach between scale-space theory and deep learning, where a deep l...
The diffused practice of pre-training Convolutional Neural Networks (CNNs) on large natural image da...
The diffused practice of pre-training Convolutional Neural Networks (CNNs) on large natural image da...