面向胚胎图像分割的噪声信道智能分割联邦学习 / Smart Split-Federated Learning over Noisy Channels for Embryo Image Segmentation
1️⃣ 一句话总结
这篇论文提出了一种智能平均策略,使得在通信信道存在严重噪声的情况下,用于胚胎图像分割的分割联邦学习模型仍能保持高精度,其抗噪能力比传统方法强两个数量级。
Split-Federated (SplitFed) learning is an extension of federated learning that places minimal requirements on the clients computing infrastructure, since only a small portion of the overall model is deployed on the clients hardware. In SplitFed learning, feature values, gradient updates, and model updates are transferred across communication channels. In this paper, we study the effects of noise in the communication channels on the learning process and the quality of the final model. We propose a smart averaging strategy for SplitFed learning with the goal of improving resilience against channel noise. Experiments on a segmentation model for embryo images shows that the proposed smart averaging strategy is able to tolerate two orders of magnitude stronger noise in the communication channels compared to conventional averaging, while still maintaining the accuracy of the final model.
面向胚胎图像分割的噪声信道智能分割联邦学习 / Smart Split-Federated Learning over Noisy Channels for Embryo Image Segmentation
这篇论文提出了一种智能平均策略,使得在通信信道存在严重噪声的情况下,用于胚胎图像分割的分割联邦学习模型仍能保持高精度,其抗噪能力比传统方法强两个数量级。
源自 arXiv: 2601.18948