An Effective Federated Object Detection Framework with Dynamic Differential Privacy

Author:

Wang Baoping1,Feng Duanyang2,Su Junyu3,Song Shiyang4

Affiliation:

1. Academy of Management, Guangdong University of Science and Technology, Dongguan 523083, China

2. Faculty of Data Science, City University of Macau, Macau 999078, China

3. Faculty of Art and Communication, Kunming University of Science and Technology, Kunming 650500, China

4. Faculty of Innovation Engineering, Macau University of Science and Technology, Macau 999078, China

Abstract

The proliferation of data across multiple domains necessitates the adoption of machine learning models that respect user privacy and data security, particularly in sensitive scenarios like surveillance and medical imaging. Federated learning (FL) offers a promising solution by decentralizing the learning process, allowing multiple participants to collaboratively train a model without sharing their data. However, when applied to complex tasks such as object detection, standard FL frameworks can fall short in balancing the dual demands of high accuracy and stringent privacy. This paper introduces a sophisticated federated object detection framework that incorporates advanced differential privacy mechanisms to enhance privacy protection. Our framework is designed to work effectively across heterogeneous and potentially large-scale datasets, characteristic of real-world environments. It integrates a novel adaptive differential privacy model that strategically adjusts the noise scale during the training process based on the sensitivity of the features being learned and the progression of the model’s accuracy. We present a detailed methodology that includes a privacy budget management system, which optimally allocates and tracks privacy expenditure throughout training cycles. Additionally, our approach employs a hybrid model aggregation technique that not only ensures robust privacy guarantees but also mitigates the degradation of object detection performance typically associated with DP. The effectiveness of our framework is demonstrated through extensive experiments on multiple benchmark datasets, including COCO and PASCAL VOC. Our results show that our framework not only adheres to strict DP standards but also achieves near-state-of-the-art object detection performance, underscoring its practical applicability. For example, in some settings, our method can lower the privacy success rate by 40% while maintaining high model accuracy. This study makes significant strides in advancing the field of privacy-preserving machine learning, especially in applications where user privacy cannot be compromised. The proposed framework sets a new benchmark for implementing federated learning in complex, privacy-sensitive tasks and opens avenues for future research in secure, decentralized machine learning technologies.

Funder

Fujian Provincial Social Science Fund Youth Project

Mindu Small and Medium-sized Banks Education Development Foundation Funded Academic Project

2022 School-Level Project of Guangdong University of Science and Technology

Publisher

MDPI AG

Reference42 articles.

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5. Raedt, L.D. (2022, January 23–29). Differential Privacy and Fairness in Decisions and Learning Tasks: A Survey. Proceedings of the Thirty-First International Joint Conference on Artificial Intelligence, IJCAI 2022, Vienna, Austria.

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