Solving geometric tasks involving point clouds by using machine learning is a challenging problem. Standard feed-forward neural networks combine linear or, if the bias parameter is included, affine layers and activation functions. Their geometric modeling is limited, which motivated the prior work introducing the multilayer hypersphere perceptron (MLHP). Its constituent part, i.e., the hypersphere neuron, is obtained by applying a conformal embedding of Euclidean space. By virtue of Clifford algebra, it can be implemented as the Cartesian dot product of inputs and weights. If the embedding is applied in a manner consistent with the dimensionality of the input space geometry, the decision surfaces of the model units become combinations of hy...
Abstract: Geometric algebra is an optimal frame work for calculating with vectors. The geometric alg...
In many contexts, simpler models are preferable to more complex models and the control of this model...
Scene representation is the process of converting sensory observations of an environment into compac...
We propose Geometric Neural Parametric Models (GNPM), a learned parametric model that takes into acc...
We present e3nn, a generalized framework for creating E(3) equivariant trainable functions, also kno...
Understanding how the statistical and geometric properties of neural activations relate to network p...
Equivariant machine learning methods have shown wide success at 3D learning applications in recent y...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
The impact of convolution neural networks (CNNs) in the supervised settings provided tremendous incr...
Generative models for 3D geometric data arise in many important applications in 3D computer vision a...
Deep neural networks implement a sequence of layer-by-layer operations that are each relatively easy...
The recent trend in deep learning methods for 3D point cloud understanding is to propose increasingl...
We test the efficiency of applying Geometric Deep Learning to the problems in low-dimensional topolo...
Learning 3D point sets with rotational invariance is an important and challenging problem in machine...
Abstract: Geometric algebra is an optimal frame work for calculating with vectors. The geometric alg...
In many contexts, simpler models are preferable to more complex models and the control of this model...
Scene representation is the process of converting sensory observations of an environment into compac...
We propose Geometric Neural Parametric Models (GNPM), a learned parametric model that takes into acc...
We present e3nn, a generalized framework for creating E(3) equivariant trainable functions, also kno...
Understanding how the statistical and geometric properties of neural activations relate to network p...
Equivariant machine learning methods have shown wide success at 3D learning applications in recent y...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
The impact of convolution neural networks (CNNs) in the supervised settings provided tremendous incr...
Generative models for 3D geometric data arise in many important applications in 3D computer vision a...
Deep neural networks implement a sequence of layer-by-layer operations that are each relatively easy...
The recent trend in deep learning methods for 3D point cloud understanding is to propose increasingl...
We test the efficiency of applying Geometric Deep Learning to the problems in low-dimensional topolo...
Learning 3D point sets with rotational invariance is an important and challenging problem in machine...
Abstract: Geometric algebra is an optimal frame work for calculating with vectors. The geometric alg...
In many contexts, simpler models are preferable to more complex models and the control of this model...
Scene representation is the process of converting sensory observations of an environment into compac...