MetaMorphosis: Task-oriented Privacy Cognizant Feature Generation for Multi-task Learning

Md. Adnan Arefeen, Zhouyu Li, M. Y. S. Uddin, Anupam Das
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Abstract

With the growth of computer vision applications, deep learning, and edge computing contribute to ensuring practical collaborative intelligence (CI) by distributing the workload among edge devices and the cloud. However, running separate single-task models on edge devices is inefficient regarding the required computational resource and time. In this context, multi-task learning allows leveraging a single deep learning model for performing multiple tasks, such as semantic segmentation and depth estimation on incoming video frames. This single processing pipeline generates common deep features that are shared among multi-task modules. However, in a collaborative intelligence scenario, generating common deep features has two major issues. First, the deep features may inadvertently contain input information exposed to the downstream modules (violating input privacy). Second, the generated universal features expose a piece of collective information than what is intended for a certain task, in which features for one task can be utilized to perform another task (violating task privacy). This paper proposes a novel deep learning-based privacy-cognizant feature generation process called “MetaMorphosis” that limits inference capability to specific tasks at hand. To achieve this, we propose a channel squeeze-excitation based feature metamorphosis module, Cross-SEC, to achieve distinct attention of all tasks and a de-correlation loss function with differential-privacy to train a deep learning model that produces distinct privacy-aware features as an output for the respective tasks. With extensive experimentation on four datasets consisting of diverse images related to scene understanding and facial attributes, we show that MetaMorphosis outperforms recent adversarial learning and universal feature generation methods by guaranteeing privacy requirements in an efficient way for image and video analytics.
多任务学习中面向任务的隐私认知特征生成
随着计算机视觉应用的发展,深度学习和边缘计算通过在边缘设备和云之间分配工作负载,有助于确保实际的协同智能(CI)。然而,就所需的计算资源和时间而言,在边缘设备上运行单独的单任务模型是低效的。在这种情况下,多任务学习允许利用单个深度学习模型来执行多个任务,例如对传入视频帧进行语义分割和深度估计。这个单一的处理管道生成在多任务模块之间共享的公共深度特征。然而,在协作智能场景中,生成共同的深度特征有两个主要问题。首先,深层特征可能无意中包含向下游模块公开的输入信息(违反输入隐私)。其次,生成的通用特征暴露了一段集体信息,而不是用于某个任务的信息,其中一个任务的特征可以用来执行另一个任务(侵犯任务隐私)。本文提出了一种新的基于深度学习的隐私认知特征生成过程,称为“变形”,该过程将推理能力限制在手头的特定任务上。为了实现这一点,我们提出了一个基于通道挤压激励的特征变形模块Cross-SEC,以实现所有任务的明显关注,并提出了一个具有微分隐私的去相关损失函数,以训练一个深度学习模型,该模型产生不同的隐私感知特征作为各自任务的输出。通过在包含与场景理解和面部属性相关的不同图像的四个数据集上进行广泛的实验,我们表明,MetaMorphosis通过以有效的方式保证图像和视频分析的隐私要求,优于最近的对抗学习和通用特征生成方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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