Publication | Closed Access
Pixel-Adaptive Convolutional Neural Networks
316
Citations
39
References
2019
Year
Unknown Venue
Data AugmentationStandard ConvolutionsMachine VisionImage AnalysisMachine LearningConvolution LayersPixel-adaptive ConvolutionEngineeringConvolutional Neural NetworkCellular Neural NetworkComputational ImagingComputer ScienceDeep LearningComputer VisionOptical Image Recognition
Convolutions are the fundamental building blocks of CNNs. The fact that their weights are spatially shared is one of the main reasons for their widespread use, but it is also a major limitation, as it makes convolutions content-agnostic. We propose a pixel-adaptive convolution (PAC) operation, a simple yet effective modification of standard convolutions, in which the filter weights are multiplied with a spatially varying kernel that depends on learnable, local pixel features. PAC is a generalization of several popular filtering techniques and thus can be used for a wide range of use cases. Specifically, we demonstrate state-of-the-art performance when PAC is used for deep joint image upsampling. PAC also offers an effective alternative to fully-connected CRF (Full-CRF), called PAC-CRF, which performs competitively compared to Full-CRF, while being considerably faster. In addition, we also demonstrate that PAC can be used as a drop-in replacement for convolution layers in pre-trained networks, resulting in consistent performance improvements.
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