N-ImageNet:用事件相机实现鲁棒、细粒度目标识别

Junho Kim, Jaehyeok Bae, Gang-Ryeong Park, Y. Kim
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引用次数: 34

摘要

我们引入N-ImageNet,这是一个大规模的数据集,旨在通过事件相机进行鲁棒、细粒度的物体识别。数据集是使用可编程硬件收集的,其中事件相机始终围绕显示来自ImageNet的图像的监视器移动。N-ImageNet是基于事件的对象识别的一个具有挑战性的基准,因为它有大量的类和样本。我们的经验表明,N-ImageNet上的预训练提高了基于事件的分类器的性能,并帮助它们在很少的标记数据下进行学习。此外,我们提出了N-ImageNet的几个变体来测试基于事件的分类器在不同相机轨迹和恶劣光照条件下的鲁棒性,并提出了一种新的事件表示来缓解性能下降。据我们所知,我们是第一个定量研究各种环境条件对基于事件的物体识别算法造成的后果的人。N-ImageNet及其变体有望指导在现实世界中部署基于事件的对象识别算法的实际实现。
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N-ImageNet: Towards Robust, Fine-Grained Object Recognition with Event Cameras
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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