1 documents found
Information × Registration Number 2123U006669, Article popup.category Препринт Title popup.author Kilianovskyi Mykhailo popup.publication 01-01-2023 popup.source_user Український католицький університет popup.source https://hdl.handle.net/20.500.14570/3943 popup.publisher Description Neural field modeling is a developing area that improves state-of-the-art results in tasks such as 3D scene reconstruction, image manipulation, generative modeling, and other aspects of deep learning. In this work, we present SplitNet, a novel neural network architecture for neural field modeling that combines multiple activation functions in a single layer. We try different techniques to improve performance, such as proper weight initialization, and benchmark its performance on image representation, 3D scene reconstruction, and image classification tasks. As a part of the work, we found a way to improve the performance of previous work on implicit neural networks with sinusoidal activations in a limited setting and study how well this improvement generalizes to other tasks and data. popup.nrat_date 2025-05-09 Close
Article
Препринт
Kilianovskyi Mykhailo. : published. 2023-01-01; Український католицький університет, 2123U006669
1 documents found

Updated: 2026-03-20