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Papers/Dynamic Filter Networks

Dynamic Filter Networks

Bert De Brabandere, Xu Jia, Tinne Tuytelaars, Luc van Gool

2016-05-31NeurIPS 2016 12Optical Flow EstimationVideo PredictionDepth Estimation
PaperPDFCode

Abstract

In a traditional convolutional layer, the learned filters stay fixed after training. In contrast, we introduce a new framework, the Dynamic Filter Network, where filters are generated dynamically conditioned on an input. We show that this architecture is a powerful one, with increased flexibility thanks to its adaptive nature, yet without an excessive increase in the number of model parameters. A wide variety of filtering operations can be learned this way, including local spatial transformations, but also others like selective (de)blurring or adaptive feature extraction. Moreover, multiple such layers can be combined, e.g. in a recurrent architecture. We demonstrate the effectiveness of the dynamic filter network on the tasks of video and stereo prediction, and reach state-of-the-art performance on the moving MNIST dataset with a much smaller model. By visualizing the learned filters, we illustrate that the network has picked up flow information by only looking at unlabelled training data. This suggests that the network can be used to pretrain networks for various supervised tasks in an unsupervised way, like optical flow and depth estimation.

Results

TaskDatasetMetricValueModel
VideoKTHCond10DFN
VideoKTHPSNR27.26DFN
VideoKTHPred20DFN
VideoKTHSSIM0.794DFN
Video PredictionKTHCond10DFN
Video PredictionKTHPSNR27.26DFN
Video PredictionKTHPred20DFN
Video PredictionKTHSSIM0.794DFN

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