Semantic Segmentation is essential to make self-driving vehicles autonomous, enabling them to understand their surroundings by assigning individual pixels to known categories. However, it operates on sensible data collected from the users' cars; thus, protecting the clients' privacy becomes a primary concern. For similar reasons, Federated Learning has been recently introduced as a new machine learning paradigm aiming to learn a global model while preserving privacy and leveraging data on millions of remote devices. Despite several efforts on this topic, no work has explicitly addressed the challenges of federated learning in semantic segmentation for driving so far. To fill this gap, we propose FedDrive, a new benchmark consisting of three settings and two datasets, incorporating the real-world challenges of statistical heterogeneity and domain generalization. We benchmark state-of-the-art algorithms from the federated learning literature through an in-depth analysis, combining them with style transfer methods to improve their generalization ability. We demonstrate that correctly handling normalization statistics is crucial to deal with the aforementioned challenges. Furthermore, style transfer improves performance when dealing with significant appearance shifts. Official website: https://feddrive.github.io.
翻译:为了让自行驾驶的车辆实现自主,必须进行分解,让它们能够通过指定已知类别的个体像素来了解周围环境。然而,它依靠从用户汽车中收集的合理数据运作;因此,保护客户隐私成为首要关切。出于类似的原因,最近将联邦学习作为一种新的机器学习模式引入,目的是学习全球模式,同时保护隐私并利用数百万远程装置的数据。尽管在这一专题上作出了若干努力,但没有工作明确解决迄今为止在静态分解中进行联合学习的挑战。为了填补这一空白,我们提议FedDrive,这是一个由三个设置和两个数据集组成的新基准,包括现实世界统计异质性和广域化的挑战。我们通过深入分析,将联邦学习文献中的最新算法与风格转换方法结合起来,以提高其一般化能力。我们证明,正确处理正常化统计对于应对上述挑战至关重要。此外,在应对重大外观转变时,风格转换改进了业绩。官方网站 https://freddrive.github。