CVMar 12, 2024

PeLK: Parameter-efficient Large Kernel ConvNets with Peripheral Convolution

arXiv:2403.07589v276 citationsh-index: 23CVPR
Originality Highly original
AI Analysis

This addresses efficiency and performance bottlenecks in large-kernel CNNs for computer vision applications, representing a significant advancement rather than an incremental improvement.

The paper tackles the problem of scaling up kernel sizes in convolutional neural networks (CNNs) without incurring excessive parameters or optimization issues, achieving over 90% parameter reduction and scaling kernels to 101x101 while outperforming modern vision models on tasks like ImageNet classification and object detection.

Recently, some large kernel convnets strike back with appealing performance and efficiency. However, given the square complexity of convolution, scaling up kernels can bring about an enormous amount of parameters and the proliferated parameters can induce severe optimization problem. Due to these issues, current CNNs compromise to scale up to 51x51 in the form of stripe convolution (i.e., 51x5 + 5x51) and start to saturate as the kernel size continues growing. In this paper, we delve into addressing these vital issues and explore whether we can continue scaling up kernels for more performance gains. Inspired by human vision, we propose a human-like peripheral convolution that efficiently reduces over 90% parameter count of dense grid convolution through parameter sharing, and manage to scale up kernel size to extremely large. Our peripheral convolution behaves highly similar to human, reducing the complexity of convolution from O(K^2) to O(logK) without backfiring performance. Built on this, we propose Parameter-efficient Large Kernel Network (PeLK). Our PeLK outperforms modern vision Transformers and ConvNet architectures like Swin, ConvNeXt, RepLKNet and SLaK on various vision tasks including ImageNet classification, semantic segmentation on ADE20K and object detection on MS COCO. For the first time, we successfully scale up the kernel size of CNNs to an unprecedented 101x101 and demonstrate consistent improvements.

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