基于多损失双输出卷积神经网络的时尚类分类

Okeke Stephen, U. J. Maduh, S. Ibrokhimov, Kueh Lee Hui, A. Al-Absi, M. Sain
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引用次数: 11

摘要

采用一种改进的多损失多输出卷积神经网络方法,从给定的具有不同卷积块的不相交数据集(Fashion and Color)中提取特征。第一个卷积块从第一个图像数据集(Fashion)中提取特征,并确定它们所属的类。第二个块负责学习在第二组数据(颜色)中编码的信息,对从第一个卷积块中提取的特征进行分类和附加。每个块都有自己的损失函数,使网络成为一个多损失卷积神经网络。在网络终端产生一组双完全连接的输出头;使网络能够对不相连的标签组合进行预测。为了验证我们的网络模型的分类能力,我们在不同的网络参数和数据大小的变化下进行了多次实验,在时尚集和颜色集上分别获得了98分和95分的显著分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multiple-Loss Dual-Output Convolutional Neural Network for Fashion Class Classification
An improved multi-loss multi-output convolutional neural network method was deployed to extract features from a given set of disjointed data (Fashion and Color) with diverse convolutional chunks in a single network. The first convolution block extracts features from the first image dataset (Fashion) and determines the classes to which they belong. The second block is responsible for learning the information encoded in the second set of data (color), classify and append such to the features extracted from the first convolutional block. Each block possesses its loss function which makes the network a multi-loss convolutional neural network. A set of double fully connected output heads are generated at the network terminal; enabling the network to perform predictions on a combination of disjointed labels. To validate the classification ability of our network model, we conducted several experiments with different network parameters and variations of data sizes and obtained remarkable classification results of 98 and 95 on the fashion and color sets respectively.
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