Lensless imaging can provide visual privacy due to the highly multiplexed characteristic of its measurements. However, this alone is a weak form of security, as various adversarial attacks can be designed to invert the one-to-many scene mapping of such cameras. In this work, we enhance the privacy provided by lensless imaging by (1) downsampling at the sensor and (2) using a programmable mask with variable patterns as our optical encoder. We build a prototype from a low-cost LCD and Raspberry Pi components, for a total cost of around 100 USD. This very low price point allows our system to be deployed and leveraged in a broad range of applications. In our experiments, we first demonstrate the viability and reconfigurability of our system by applying it to various classification tasks: MNIST, CelebA (face attributes), and CIFAR10. By jointly optimizing the mask pattern and a digital classifier in an end-to-end fashion, low-dimensional, privacy-enhancing embeddings are learned directly at the sensor. Secondly, we show how the proposed system, through variable mask patterns, can thwart adversaries that attempt to invert the system (1) via plaintext attacks or (2) in the event of camera parameters leaks. We demonstrate the defense of our system to both risks, with 55% and 26% drops in image quality metrics for attacks based on model-based convex optimization and generative neural networks respectively. We open-source a wave propagation and camera simulator needed for end-to-end optimization, the training software, and a library for interfacing with the camera.
翻译:无镜头成像可以提供视觉隐私权,因为其测量结果具有高度多重特性。然而,这仅仅是一种薄弱的安全形式,因为各种对抗性攻击可以设计为推翻这些照相机的一到多个场景的映射。在这项工作中,我们通过下列方法加强无镜头成像提供的隐私:(1) 在传感器上下取样,(2) 使用带有可变模式的编程面具作为光学编码器。我们用低成本的LCD和Raspberry Pi组件建立一个原型,总成本约为100美元。这个极低的价格点使我们的系统能够在广泛的应用中部署和杠杆化。在我们实验中,我们首先通过将系统应用到各种分类任务中来展示其可行性和重新配置。(1) 在传感器上共同优化顶端、低度、增强隐私的公开嵌入器,我们直接在传感器上学习。第二,我们通过可变式的面罩式模式,我们首先展示了我们系统的可行性和重新配置的网络,然后通过直截面的图像显示我们内部的系统,然后通过直径的图像显示我们内部的系统,然后通过直径的系统显示我们系统,然后显示我们内部的图像的系统。