Multi-Head Convolutional Neural Network Compression based on High-Order Principal Component Analysis

Taehyeon Kim, Youjeong Na, Seho Park
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Abstract

A multi-head convolutional neural network performs remarkably in various multi-task learning-based computer vision applications. Behind these achievements, a multi-head convolutional neural network utilizes significantly huge parameters and complex neural architecture. This peculiarity of the multi-head convolutional neural networks can make them represent and capture versatile features from images; however, it also creates serious implementation problems when deploying the multi-head convolutional neural network on resource-constrained systems. To handle this problem, we propose a novel neural network compression algorithm that can maintain the core features and remove redundant features in the convolutional layer as an aspect of multi-head convolutional neural network architecture. The proposed neural network compression algorithm computes multidimensional principal components on the convolutional layer of a multi-head convolutional neural network with statistically guaranteed hyper-parameter optimization. Experiments show that the proposed algorithm is able to produce an efficient multi-head convolutional neural network with low computational complexity and negligible performance degradation.
基于高阶主成分分析的多头卷积神经网络压缩
多头卷积神经网络在各种基于多任务学习的计算机视觉应用中表现优异。在这些成就的背后,多头卷积神经网络使用了巨大的参数和复杂的神经结构。多头卷积神经网络的这种特性使其能够表示和捕获图像中的多种特征;然而,当在资源受限的系统上部署多头卷积神经网络时,也会产生严重的实现问题。为了解决这一问题,我们提出了一种新的神经网络压缩算法,作为多头卷积神经网络架构的一个方面,该算法可以保留卷积层的核心特征并去除冗余特征。提出的神经网络压缩算法在具有统计保证的超参数优化的多头卷积神经网络的卷积层上计算多维主成分。实验表明,该算法能够生成一个高效的多头卷积神经网络,计算复杂度低,性能下降可以忽略不计。
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