摘要
1 Introduction On-device deep learning(DL)on mobile and embedded IoT devices drives various applications[1]like robotics image recognition[2]and drone swarm classification[3].Efficient local data processing preserves privacy,enhances responsiveness,and saves bandwidth.However,current ondevice DL relies on predefined patterns,leading to accuracy and efficiency bottlenecks.It is difficult to provide feedback on data processing performance during the data acquisition stage,as processing typically occurs after data acquisition.
基金
supported by the National Science Fund for Distinguished Young Scholars(62025205)
the National Natural Science Foundation of China(Grant Nos.62032020,62102317)
CityU APRC Grant(9610633).