Peng Xi, Zhao Bo, Yan Rui, Tang Huajin, Yi Zhang
IEEE Trans Neural Netw Learn Syst. 2017 Apr;28(4):791-803. doi: 10.1109/TNNLS.2016.2536741. Epub 2016 Mar 18.
Address event representation (AER) image sensors represent the visual information as a sequence of events that denotes the luminance changes of the scene. In this paper, we introduce a feature extraction method for AER image sensors based on the probability theory, namely, bag of events (BOE). The proposed approach represents each object as the joint probability distribution of the concurrent events, and each event corresponds to a unique activated pixel of the AER sensor. The advantages of BOE include: 1) it is a statistical learning method and has a good interpretability in mathematics; 2) BOE can significantly reduce the effort to tune parameters for different data sets, because it only has one hyperparameter and is robust to the value of the parameter; 3) BOE is an online learning algorithm, which does not require the training data to be collected in advance; 4) BOE can achieve competitive results in real time for feature extraction (>275 frames/s and >120,000 events/s); and 5) the implementation complexity of BOE only involves some basic operations, e.g., addition and multiplication. This guarantees the hardware friendliness of our method. The experimental results on three popular AER databases (i.e., MNIST-dynamic vision sensor, Poker Card, and Posture) show that our method is remarkably faster than two recently proposed AER categorization systems while preserving a good classification accuracy.
地址事件表示(AER)图像传感器将视觉信息表示为表示场景亮度变化的事件序列。在本文中,我们基于概率论介绍了一种用于AER图像传感器的特征提取方法,即事件袋(BOE)。所提出的方法将每个对象表示为并发事件的联合概率分布,并且每个事件对应于AER传感器的唯一激活像素。BOE的优点包括:1)它是一种统计学习方法,在数学上具有良好的可解释性;2)BOE可以显著减少针对不同数据集调整参数的工作量,因为它只有一个超参数并且对参数值具有鲁棒性;3)BOE是一种在线学习算法,不需要预先收集训练数据;4)BOE可以实时实现具有竞争力的特征提取结果(>275帧/秒和>120,000事件/秒);5)BOE的实现复杂度仅涉及一些基本操作,例如加法和乘法。这保证了我们方法对硬件的友好性。在三个流行的AER数据库(即MNIST-动态视觉传感器、扑克牌和姿势)上的实验结果表明,我们的方法在保持良好分类精度的同时,比最近提出的两种AER分类系统显著更快。