We introduce deep scale-spaces (DSS), a generalization of convolutional neural networks, exploiting the scale symmetry structure of conventional image recognition tasks. Put plainly, the class of an image is invariant to the scale at which it is viewed. We construct scale equivariant cross-correlations based on a principled extension of convolutions, grounded in the theory of scale-spaces and semigroups. As a very basic operation, these cross-correlations can be used in almost any modern deep learning architecture in a plug-and-play manner. We demonstrate our networks on the Patch Camelyon and Cityscapes datasets, to prove their utility and perform introspective studies to further understand their properties
Despite the approximate invariance to scale learned in deep Convolutional Neural Networks (CNNs) tra...
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...
This paper presents a hybrid approach between scale-space theory and deep learning, where a deep lea...
International audienceThe translation equivariance of convolutions can make convolutional neural net...
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...
Convolutional Neural Networks (CNNs) require large image corpora to be trained on classification tas...
AbstractConvolutional Neural Networks (CNNs) require large image corpora to be trained on classifica...
We study the effect of injecting local scale equivariance into Convolutional Neural Networks. This i...
We propose a Convolutional Neural Network (CNN), which encodes local scale invariance and equivarian...
While scale-invariant modeling has substantially boosted the performance of visual recognition tasks...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
Deep neural networks can solve many kinds of learning problems, but only if a lot of data is availab...
Despite the approximate invariance to scale learned in deep Convolutional Neural Networks (CNNs) tra...
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...
This paper presents a hybrid approach between scale-space theory and deep learning, where a deep lea...
International audienceThe translation equivariance of convolutions can make convolutional neural net...
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...
Convolutional Neural Networks (CNNs) require large image corpora to be trained on classification tas...
AbstractConvolutional Neural Networks (CNNs) require large image corpora to be trained on classifica...
We study the effect of injecting local scale equivariance into Convolutional Neural Networks. This i...
We propose a Convolutional Neural Network (CNN), which encodes local scale invariance and equivarian...
While scale-invariant modeling has substantially boosted the performance of visual recognition tasks...
The ability to handle large scale variations is crucial for many real world visual tasks. A straight...
Deep neural networks can solve many kinds of learning problems, but only if a lot of data is availab...
Despite the approximate invariance to scale learned in deep Convolutional Neural Networks (CNNs) tra...
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...