Neuromorphic Event-Based Facial Expression Recognition

Neuromorphic Event-Based Facial Expression Recognition

Recently, event cameras have shown large applicability in several computer vision fields especially concerning tasks that require high temporal resolution. In this work, we investigate the usage of such kind of data for emotion recognition by presenting NEFER, a dataset for Neuromorphic Event-based Facial Expression Recognition.

Faces in Event Streams (FES): An Annotated Face Dataset for Event Cameras

Faces in Event Streams (FES): An Annotated Face Dataset for Event Cameras

Faces in Event Streams dataset contains 689 minutes of recorded event streams, and 1.6 million annotated faces with bounding box and five point facial landmarks. This paper presents the dataset and corresponding models for detecting face and facial landmakrs directly from event stream data.