CVNEApr 7, 2020

Real-time Classification from Short Event-Camera Streams using Input-filtering Neural ODEs

arXiv:2004.03156v16 citations
AI Analysis

This addresses the need for efficient, low-latency inference in event-based vision systems, offering a novel method for handling asynchronous data streams.

The paper tackles the problem of real-time classification from short event-camera streams by proposing Input-filtering Neural ODEs (INODE), which outperforms LSTM baselines on tasks like ASL and matches a larger LSTM on NCALTECH, achieving accurate results with very few events.

Event-based cameras are novel, efficient sensors inspired by the human vision system, generating an asynchronous, pixel-wise stream of data. Learning from such data is generally performed through heavy preprocessing and event integration into images. This requires buffering of possibly long sequences and can limit the response time of the inference system. In this work, we instead propose to directly use events from a DVS camera, a stream of intensity changes and their spatial coordinates. This sequence is used as the input for a novel \emph{asynchronous} RNN-like architecture, the Input-filtering Neural ODEs (INODE). This is inspired by the dynamical systems and filtering literature. INODE is an extension of Neural ODEs (NODE) that allows for input signals to be continuously fed to the network, like in filtering. The approach naturally handles batches of time series with irregular time-stamps by implementing a batch forward Euler solver. INODE is trained like a standard RNN, it learns to discriminate short event sequences and to perform event-by-event online inference. We demonstrate our approach on a series of classification tasks, comparing against a set of LSTM baselines. We show that, independently of the camera resolution, INODE can outperform the baselines by a large margin on the ASL task and it's on par with a much larger LSTM for the NCALTECH task. Finally, we show that INODE is accurate even when provided with very few events.

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