Spherical NeurO n s for Geometric Deep Learning is popular PDF and ePub book, written by Pavlo Melnyk in 2024-09-03, it is a fantastic choice for those who relish reading online the Uncategoriezed genre. Let's immerse ourselves in this engaging Uncategoriezed book by exploring the summary and details provided below. Remember, Spherical NeurO n s for Geometric Deep Learning can be Read Online from any device for your convenience.

Spherical NeurO n s for Geometric Deep Learning Book PDF Summary

Felix Klein’s Erlangen Programme of 1872 introduced a methodology to unify non-Euclidean geometries. Similarly, geometric deep learning (GDL) constitutes a unifying framework for various neural network architectures. GDL is built from the first principles of geometry—symmetry and scale separation—and enables tractable learning in high dimensions. Symmetries play a vital role in preserving structural information of geometric data and allow models (i.e., neural networks) to adjust to different geometric transformations. In this context, spheres exhibit a maximal set of symmetries compared to other geometric entities in Euclidean space. The orthogonal group O(n) fully encapsulates the symmetry structure of an nD sphere, including both rotational and reflection symmetries. In this thesis, we focus on integrating these symmetries into a model as an inductive bias, which is a crucial requirement for addressing problems in 3D vision as well as in natural sciences and their related applications. In Paper A, we focus on 3D geometry and use the symmetries of spheres as geometric entities to construct neurons with spherical decision surfaces—spherical neurons—using a conformal embedding of Euclidean space. We also demonstrate that spherical neuron activations are non-linear due to the inherent non-linearity of the input embedding, and thus, do not necessarily require an activation function. In addition, we show graphically, theoretically, and experimentally that spherical neuron activations are isometries in Euclidean space, which is a prerequisite for the equivariance contributions of our subsequent work. In Paper B, we closely examine the isometry property of the spherical neurons in the context of equivariance under 3D rotations (i.e., SO(3)-equivariance). Focusing on 3D in this work and based on a minimal set of four spherical neurons (one learned spherical decision surface and three copies), the centers of which are rotated into the corresponding vertices of a regular tetrahedron, we construct a spherical filter bank. We call it a steerable 3D spherical neuron because, as we verify later, it constitutes a steerable filter. Finally, we derive a 3D steerability constraint for a spherical neuron (i.e., a single spherical decision surface). In Paper C, we present a learnable point-cloud descriptor invariant under 3D rotations and reflections, i.e., the O(3) actions, utilizing the steerable 3D spherical neurons we introduced previously, as well as vector neurons from related work. Specifically, we propose an embedding of the 3D steerable neurons into 4D vector neurons, which leverages end-to-end training of the model. The resulting model, termed TetraSphere, sets a new state-of-the-art performance classifying randomly rotated real-world object scans. Thus, our results reveal the practical value of steerable 3D spherical neurons for learning in 3D Euclidean space. In Paper D, we generalize to nD the concepts we previously established in 3D, and propose O(n)-equivariant neurons with spherical decision surfaces, which we call Deep Equivariant Hyper-spheres. We demonstrate how to combine them in a network that directly operates on the basis of the input points and propose an invariant operator based on the relation between two points and a sphere, which as we show, turns out to be a Gram matrix. In summary, this thesis introduces techniques based on spherical neurons that enhance the GDL framework, with a specific focus on equivariant and invariant learning on point sets.

Detail Book of Spherical NeurO n s for Geometric Deep Learning PDF

Spherical NeurO n s for Geometric Deep Learning
  • Author : Pavlo Melnyk
  • Release : 03 September 2024
  • Publisher : Linköping University Electronic Press
  • ISBN : 9789180756808
  • Genre : Uncategoriezed
  • Total Page : 48 pages
  • Language : English
  • PDF File Size : 9,6 Mb

If you're still pondering over how to secure a PDF or EPUB version of the book Spherical NeurO n s for Geometric Deep Learning by Pavlo Melnyk, don't worry! All you have to do is click the 'Get Book' buttons below to kick off your Download or Read Online journey. Just a friendly reminder: we don't upload or host the files ourselves.

Get Book

Lie Group Machine Learning

Lie Group Machine Learning Author : Fanzhang Li,Li Zhang,Zhao Zhang
Publisher : Walter de Gruyter GmbH & Co KG
File Size : 21,6 Mb
Get Book
This book explains deep learning concepts and derives semi-supervised learning and nuclear learning ...

Neural Networks for Robotics

Neural Networks for Robotics Author : Nancy Arana-Daniel,Alma Y. Alanis,Carlos Lopez-Franco
Publisher : CRC Press
File Size : 46,9 Mb
Get Book
The book offers an insight on artificial neural networks for giving a robot a high level of autonomo...

Textbook of Assisted Reproductive Techniques

Textbook of Assisted Reproductive Techniques Author : David K. Gardner,Ariel Weissman,Colin M. Howles,Zeev Shoham
Publisher : CRC Press
File Size : 41,5 Mb
Get Book
Established as the definitive reference for the IVF clinic, the sixth edition has been extensively r...

Deep Learning

Deep Learning Author : Ian Goodfellow,Yoshua Bengio,Aaron Courville
Publisher : MIT Press
File Size : 7,7 Mb
Get Book
An introduction to a broad range of topics in deep learning, covering mathematical and conceptual ba...