Learnable Heterogeneous Convolution: Learning both topology and strength

01/13/2023
by   Rongzhen Zhao, et al.
0

Existing convolution techniques in artificial neural networks suffer from huge computation complexity, while the biological neural network works in a much more powerful yet efficient way. Inspired by the biological plasticity of dendritic topology and synaptic strength, our method, Learnable Heterogeneous Convolution, realizes joint learning of kernel shape and weights, which unifies existing handcrafted convolution techniques in a data-driven way. A model based on our method can converge with structural sparse weights and then be accelerated by devices of high parallelism. In the experiments, our method either reduces VGG16/19 and ResNet34/50 computation by nearly 5x on CIFAR10 and 2x on ImageNet without harming the performance, where the weights are compressed by 10x and 4x respectively; or improves the accuracy by up to 1.0 on CIFAR10 and 0.5 be available on www.github.com/Genera1Z/LearnableHeterogeneousConvolution.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset