Neuromorphic Wireless Device-Edge Co-Inference via the Directed Information Bottleneck

Neuromorphic Wireless Device-Edge Co-Inference via the Directed Information Bottleneck

The proposed system is designed using a transmitter-centric information-theoretic criterion that targets a reduction of the communication overhead, while retaining the most relevant information for the end-to-end semantic task of interest. Numerical results on standard data sets validate the proposed architecture, and a preliminary testbed realization is reported.

An Asynchronous Kalman Filter for Hybrid Event Cameras

An Asynchronous Kalman Filter for Hybrid Event Cameras

Our model outperforms by a large margin feed-forward event-based architectures. Moreover, our method does not require any reconstruction of intensity images from events, showing that training directly from raw events is possible, more efficient, and more accurate than passing through an intermediate intensity image.

ESL: Event-Based Structured Light

ESL: Event-Based Structured Light

Our model outperforms by a large margin feed-forward event-based architectures. Moreover, our method does not require any reconstruction of intensity images from events, showing that training directly from raw events is possible, more efficient, and more accurate than passing through an intermediate intensity image.

Event-Driven Visual-Tactile Sensing and Learning for Robots

Event-Driven Visual-Tactile Sensing and Learning for Robots

Our neuromorphic fingertip tactile sensor, NeuTouch, scales well with the number of taxels thanks to its event-based nature. Likewise, our Visual-Tactile Spiking Neural Network (VT-SNN) enables fast perception when coupled with event sensors. We evaluate our visual-tactile system (using the NeuTouch and Prophesee event camera) on two robot tasks.

How To Calibrate Your Event Camera

How To Calibrate Your Event Camera

We propose a generic event camera calibration framework using image reconstruction. Instead of relying on blinking patterns or external screens, we show that neural network-based image reconstruction is well suited for the task of intrinsic and extrinsic calibration of event cameras.