基于深度神经网络的视觉服装领型识别

Zhenxing Li, Diming Zhang, Yuanjiang Li, Lu Wang
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引用次数: 0

摘要

塑造时尚风格是时尚产业的关键。虽然传统的人工分析速度缓慢且效率低下,但我们的目标是使用深度神经网络实现自动化。尤其在本文中,我们提出了一种基于vgg16的更适合商用的衣领识别网络来解决服装领域中衣领识别困难的问题。此外,为了使我们的研究和进一步的研究使用深度学习,我们创建了一个名为COLLAR 2000的数据集。为了达到商业网络对识别精度、网络稳定性、网络复杂性等方面的要求,我们分别探索了传统的机器学习方法和成熟的神经网络,通过调整PCA、SVM、LeNet、AlexNet、VGG16的参数,结合迁移学习方法,使其更适合服装领识别。实验结果表明,基于vgg16的领圈识别网络识别准确率为81.7%,准确率为83.0%,召回率为81.7%,F1-Score为0.82,网络稳定性和复杂度适中,更适合商业应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Garment Collar Style Identification using Deep Neural Networks
Modeling fashion style is key for fashion industry. While traditional manually analysis is slow and inefficient, we aim to automate it using deep neural networks. Particularly, in this paper, we propose a VGG16-based collar recognition network that is more suitable for commercial use to solve the problem of difficult collar recognition in the apparel field. Furthermore, to enable our research and further research using deep learning, we create a dataset called COLLAR 2000. To achieve the commercial network for recognition accuracy, network stability, network complexity and other requirements, we explored traditional machine learning methods as well as mature neural networks, respectively, by adjusting the parameters of PCA, SVM, LeNet, AlexNet, VGG16 and combining migration learning methods to make them more suitable for garment collar recognition. The experimental results show that the VGG16-based collar recognition network is the best for collar recognition (81.7% recognition accuracy, 83.0%precision, 81.7% recall, 0.82 F1-Score), the network stability and complexity are moderate, which is more suitable for commercial use.
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