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HCNAF: Hyper-Conditioned Neural Autoregressive Flow and its Application for Probabilistic Occupancy Map Forecasting

机译:HCNAF:超条件神经自回归流及其在概率占用图预测中的应用

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We introduce Hyper-Conditioned Neural Autoregressive Flow (HCNAF); a powerful universal distribution approximator designed to model arbitrarily complex conditional probability density functions. HCNAF consists of a neural-net based conditional autoregressive flow (AF) and a hyper-network that can take large conditions in non-autoregressive fashion and outputs the network parameters of the AF. Like other flow models, HCNAF performs exact likelihood inference. We conduct a number of density estimation tasks on toy experiments and MNIST to demonstrate the effectiveness and attributes of HCNAF, including its generalization capability over unseen conditions and expressivity. Finally, we show that HCNAF scales up to complex high-dimensional prediction problems of the magnitude of self-driving and that HCNAF yields a state-of-the-art performance in a public self-driving dataset.
机译:我们介绍了超条件神经自回归流(HCNAF);一个强大的通用分布逼近器,旨在对任意复杂的条件概率密度函数进行建模。 HCNAF由基于神经网络的条件自回归流(AF)和超网络组成,该超网络可以以非自回归的方式处理较大的条件并输出AF的网络参数。像其他流模型一样,HCNAF会执行精确的似然推断。我们在玩具实验和MNIST上进行了许多密度估算任务,以证明HCNAF的有效性和属性,包括其在看不见的条件和表达能力下的泛化能力。最后,我们显示了HCNAF可扩展到自动驾驶幅度的复杂高维预测问题,并且HCNAF在公共自动驾驶数据集中产生了最先进的性能。

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