Boundary Uncertainty in a Single-Stage Temporal Action Localization Network
In this paper, we address the problem of temporal action localization with a single stage neural network. In the proposed architecture we model the boundary predictions as uni-variate Gaussian distributions in order to model their uncertainties, which is the first in this area to the best of our knowledge. We use two uncertainty-aware boundary regression losses: first, the Kullback-Leibler divergence between the ground truth location of the boundary and the Gaussian modeling the prediction of the boundary and second, the expectation of the ℓ_1 loss under the same Gaussian. We show that with both uncertainty modeling approaches improve the detection performance by more than 1.5% in mAP@tIoU=0.5 and that the proposed simple one-stage network performs closely to more complex one and two stage networks.
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