N-ImageNet: Towards Robust, Fine-Grained Object Recognition with Event Cameras

ICCV 2021  ยท  Junho Kim, Jaehyeok Bae, Gangin Park, Dongsu Zhang, Young Min Kim ยท

We introduce N-ImageNet, a large-scale dataset targeted for robust, fine-grained object recognition with event cameras. The dataset is collected using programmable hardware in which an event camera consistently moves around a monitor displaying images from ImageNet. N-ImageNet serves as a challenging benchmark for event-based object recognition, due to its large number of classes and samples. We empirically show that pretraining on N-ImageNet improves the performance of event-based classifiers and helps them learn with few labeled data. In addition, we present several variants of N-ImageNet to test the robustness of event-based classifiers under diverse camera trajectories and severe lighting conditions, and propose a novel event representation to alleviate the performance degradation. To the best of our knowledge, we are the first to quantitatively investigate the consequences caused by various environmental conditions on event-based object recognition algorithms. N-ImageNet and its variants are expected to guide practical implementations for deploying event-based object recognition algorithms in the real world.

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Datasets


Introduced in the Paper:

N-ImageNet

Used in the Paper:

N-Caltech 101 N-CARS

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Classification N-ImageNet Binary Event Image Accuracy (%) 46.36 # 6
Robust classification N-ImageNet Sorted Time Surface Accuracy (%) 33.62 # 8
Robust classification N-ImageNet DiST Accuracy (%) 35.89 # 7
Classification N-ImageNet Sorted Time Surface Accuracy (%) 47.90 # 3
Classification N-ImageNet Timestamp Image Accuracy (%) 45.86 # 7
Classification N-ImageNet Time Surface Accuracy (%) 44.32 # 9
Classification N-ImageNet Event Image Accuracy (%) 45.77 # 8
Classification N-ImageNet HATS Accuracy (%) 47.14 # 5
Classification N-ImageNet Event Histogram Accuracy (%) 47.73 # 4
Classification N-ImageNet Event Spike Tensor Accuracy (%) 48.93 # 1
Classification N-ImageNet DiST Accuracy (%) 48.43 # 2
Robust classification N-ImageNet Binary Event Image Accuracy (%) 31.31 # 14
Robust classification N-ImageNet Event Image Accuracy (%) 31.61 # 13
Robust classification N-ImageNet Time Surface Accuracy (%) 33.54 # 9
Robust classification N-ImageNet Timestamp Image Accuracy (%) 33.37 # 11
Classification N-ImageNet (mini) Timestamp Image Accuracy (%) 60.46 # 3
Classification N-ImageNet (mini) Sorted Time Surface Accuracy (%) 58.38 # 5
Classification N-ImageNet (mini) Event Imge Accuracy (%) 61.42 # 1
Classification N-ImageNet (mini) Binary Event Image Accuracy (%) 53.52 # 6
Classification N-ImageNet (mini) DiST Accuracy (%) 59.74 # 4
Classification N-ImageNet (mini) Event Histogram Accuracy (%) 61.02 # 2

Methods


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