Search Results for author: Shugo Nakamura

Found 2 papers, 0 papers with code

Investigation of Frame Differences as Motion Cues for Video Object Segmentation

no code implementations12 Mar 2025 Sota Kawamura, Hirotada Honda, Shugo Nakamura, Takashi Sano

Our results suggest the usefulness of employing frame differences as motion cues in cases with limited computational resources.

Optical Flow Estimation Segmentation +3

From Coupled Oscillators to Graph Neural Networks: Reducing Over-smoothing via a Kuramoto Model-based Approach

no code implementations6 Nov 2023 Tuan Nguyen, Hirotada Honda, Takashi Sano, Vinh Nguyen, Shugo Nakamura, Tan M. Nguyen

We propose the Kuramoto Graph Neural Network (KuramotoGNN), a novel class of continuous-depth graph neural networks (GNNs) that employs the Kuramoto model to mitigate the over-smoothing phenomenon, in which node features in GNNs become indistinguishable as the number of layers increases.

Graph Neural Network

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