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HATS: Histograms of Averaged Time Surfaces for Robust Event-based Object Classification

About

Event-based cameras have recently drawn the attention of the Computer Vision community thanks to their advantages in terms of high temporal resolution, low power consumption and high dynamic range, compared to traditional frame-based cameras. These properties make event-based cameras an ideal choice for autonomous vehicles, robot navigation or UAV vision, among others. However, the accuracy of event-based object classification algorithms, which is of crucial importance for any reliable system working in real-world conditions, is still far behind their frame-based counterparts. Two main reasons for this performance gap are: 1. The lack of effective low-level representations and architectures for event-based object classification and 2. The absence of large real-world event-based datasets. In this paper we address both problems. First, we introduce a novel event-based feature representation together with a new machine learning architecture. Compared to previous approaches, we use local memory units to efficiently leverage past temporal information and build a robust event-based representation. Second, we release the first large real-world event-based dataset for object classification. We compare our method to the state-of-the-art with extensive experiments, showing better classification performance and real-time computation.

Amos Sironi, Manuele Brambilla, Nicolas Bourdis, Xavier Lagorce, Ryad Benosman• 2018

Related benchmarks

TaskDatasetResultRank
ClassificationCIFAR10-DVS
Accuracy52.4
133
Image ClassificationCIFAR10-DVS (test)
Accuracy52.4
80
Image ClassificationN-MNIST (test)
Accuracy99.1
69
Object ClassificationN-CARS (test)
Accuracy90.9
53
Object ClassificationN-Caltech101 (test)
Accuracy70
51
Image ClassificationN-MNIST
Accuracy99.1
44
Image ClassificationN-Caltech-101
Top-1 Acc64.2
19
Image ClassificationN-Cars
Top-1 Accuracy81
10
Object ClassificationN-Caltech101
Accuracy69.1
9
Binary ClassificationN-Cars
Accuracy90.2
6
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