Skip to content

Latest commit

 

History

History
28 lines (22 loc) · 2.14 KB

File metadata and controls

28 lines (22 loc) · 2.14 KB

Data Governance for Sustainable Smart City - SP3: An Intelligent Drone System Design with Edge AI and Adaptability

回應國家重要挑戰之人工智慧主題研究專案-永續智慧城市之資料治理 - 子計畫3: 具邊緣人工智慧與可適應性之智能無人機系統設計

Project website: https://www.twaicoe.org/design-of-integrated-command-and-control-center-for-sustainable-smart-cities

image image

This work presents the ETAUS, an Edge and Trustworthy AI UAV System, as a mobile sensing platform for air quality monitoring. To meet the real-time processing demands and achieve adaptivity and scalability, ETAUS employs an FPGA device as the main hardware computing architecture rather than relying solely on a microprocessor or integrating with GPUs. ETAUS contains a neural engine that can execute our customized AI model for air quality index (AQI) level classification and a pre-trained model for detecting objects containing private information. ETAUS also incorporates a de-identification process, cryptographic functions and protection matrices to safeguard information and individuals' privacy. Furthermore, cryptographic functions and protection matrices are implemented as reconfigurable modules, which can accelerate processing and protect data privacy and be reconfigured as needed.

System Implementation

Item
FPGA Platform AMD-Xilinx Kria KV260 Vision AI Starter Kit
OS Petalinux
Neural Engine Xilinx DPU

Edge AI Models

Item
AQI Level Classification Customized ResNet50
Detection for Objects with Individuals' Privacy YOLOv4

Dataset

Item Source
Environmental Information Open Platform https://data.epa.gov.tw/paradigm
Air Pollution Image Dataset from India and Nepal https://www.kaggle.com/ds/3152196