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EventNet: Asynchronous Recursive Event Processing

About

Event cameras are bio-inspired vision sensors that mimic retinas to asynchronously report per-pixel intensity changes rather than outputting an actual intensity image at regular intervals. This new paradigm of image sensor offers significant potential advantages; namely, sparse and non-redundant data representation. Unfortunately, however, most of the existing artificial neural network architectures, such as a CNN, require dense synchronous input data, and therefore, cannot make use of the sparseness of the data. We propose EventNet, a neural network designed for real-time processing of asynchronous event streams in a recursive and event-wise manner. EventNet models dependence of the output on tens of thousands of causal events recursively using a novel temporal coding scheme. As a result, at inference time, our network operates in an event-wise manner that is realized with very few sum-of-the-product operations---look-up table and temporal feature aggregation---which enables processing of 1 mega or more events per second on standard CPU. In experiments using real data, we demonstrated the real-time performance and robustness of our framework.

Yusuke Sekikawa, Kosuke Hara, Hideo Saito• 2018

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR10-DVS (test)
Accuracy17.1
80
Image ClassificationN-MNIST (test)
Accuracy75.2
69
Object ClassificationN-CARS (test)
Accuracy75
53
Object ClassificationN-Caltech101 (test)
Accuracy42.5
51
Image ClassificationASL-DVS (test)
Accuracy94.9
13
Event-based ClassificationN-Caltech101 (test)
GFLOPs0.91
9
Event-based ClassificationN-CARS (test)
Latency (CPU, ms)9.3
8
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