학술논문

[WIP] Unlocking Static Images for Training Event-driven Neural Networks
Document Type
Conference
Source
2022 8th International Conference on Event-Based Control, Communication, and Signal Processing (EBCCSP) Event-Based Control, Communication, and Signal Processing (EBCCSP), 2022 8th International Conference on. :1-4 Jun, 2022
Subject
Bioengineering
Components, Circuits, Devices and Systems
Computing and Processing
General Topics for Engineers
Power, Energy and Industry Applications
Robotics and Control Systems
Signal Processing and Analysis
Training
Visualization
Statistical analysis
Machine vision
Signal processing
Cameras
Sensor systems
event-driven
transfer learning
deep learning
Language
Abstract
Event driven cameras have the potential to revolutionise the real-time visual sensory processing paradigm. These asynchronous sensors detect change in the environment with low latency and high dynamic range, allowing for orders of magnitude faster systems than the state of the art using intensity cameras. On the other hand, deep artificial neural networks have refashioned machine vision in the last decade, greatly expanding the reach of viable tasks, supported by the creation of many large scale image datasets. In this work, we present a modality to leverage these large scale datasets for the purpose of training off-the-shelf deep learning architectures and re-appropriating them for event-based tasks. To this end, we describe an event representation, EROS, and a method to convert images to an EROS-like representation such that image datasets can train neural networks for event driven applications.