CVMar 15, 2019

Selective Kernel Networks

arXiv:1903.06586v22638 citationsHas Code
Originality Highly original
AI Analysis

This addresses a limitation in CNN design for computer vision tasks, offering improved accuracy and efficiency, though it is an incremental advancement over existing architectures.

The paper tackled the fixed receptive field size in CNNs by proposing Selective Kernel Networks (SKNets), which adaptively adjust receptive field sizes based on input scales, achieving state-of-the-art performance on ImageNet and CIFAR benchmarks with lower model complexity.

In standard Convolutional Neural Networks (CNNs), the receptive fields of artificial neurons in each layer are designed to share the same size. It is well-known in the neuroscience community that the receptive field size of visual cortical neurons are modulated by the stimulus, which has been rarely considered in constructing CNNs. We propose a dynamic selection mechanism in CNNs that allows each neuron to adaptively adjust its receptive field size based on multiple scales of input information. A building block called Selective Kernel (SK) unit is designed, in which multiple branches with different kernel sizes are fused using softmax attention that is guided by the information in these branches. Different attentions on these branches yield different sizes of the effective receptive fields of neurons in the fusion layer. Multiple SK units are stacked to a deep network termed Selective Kernel Networks (SKNets). On the ImageNet and CIFAR benchmarks, we empirically show that SKNet outperforms the existing state-of-the-art architectures with lower model complexity. Detailed analyses show that the neurons in SKNet can capture target objects with different scales, which verifies the capability of neurons for adaptively adjusting their receptive field sizes according to the input. The code and models are available at https://github.com/implus/SKNet.

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