足底压力不足图像语义分类的学习模型

Yao Wu, Qun Wu, N. Dey, R. Sherratt
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引用次数: 13

摘要

建立一个可靠和稳定的模型,通过使用不足的标记样本来预测目标是可行和有效的,特别是对于传感器生成的数据集。本文的灵感来自于不足的数据集学习算法,如基于度量的、原型网络的和元学习的,因此我们提出了一种不足的数据集迁移模型学习方法。首先,介绍了迁移学习的两个基本模型。然后介绍了分类系统和计算标准。其次,通过足部扫描系统获取舒适鞋设计所需的足底压力数据集并进行预处理;采用AlexNet预训练卷积神经网络和基于卷积神经网络(CNN)的传递建模,对足底压力图像的分类准确率达到93.5%以上。最后,将提出的方法与现有的分类器VGG、ResNet、AlexNet和预训练的CNN进行了比较。并在SUN、CUB、AWA1、AWA2和aPY等公开测试数据库上,以精度(tr、ts、H)和时间(训练和评估)为指标,与已知尺度和移动(SS)和未知平面槽(PS)划分方法进行了比较。与其他方法相比,该方法在大多数指标上都表现出较高的性能。基于迁移学习的方法可以应用于传感器成像领域的其他数据集不足的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Models for Semantic Classification of Insufficient Plantar Pressure Images
Establishing a reliable and stable model to predict a target by using insufficient labeled samples is feasible and effective, particularly, for a sensor-generated data-set. This paper has been inspired with insufficient data-set learning algorithms, such as metric-based, prototype networks and meta-learning, and therefore we propose an insufficient data-set transfer model learning method. Firstly, two basic models for transfer learning are introduced. A classification system and calculation criteria are then subsequently introduced. Secondly, a dataset of plantar pressure for comfort shoe design is acquired and preprocessed through foot scan system; and by using a pre-trained convolution neural network employing AlexNet and convolution neural network (CNN)- based transfer modeling, the classification accuracy of the plantar pressure images is over 93.5%. Finally, the proposed method has been compared to the current classifiers VGG, ResNet, AlexNet and pre-trained CNN. Also, our work is compared with known-scaling and shifting (SS) and unknown-plain slot (PS) partition methods on the public test databases: SUN, CUB, AWA1, AWA2, and aPY with indices of precision (tr, ts, H) and time (training and evaluation). The proposed method for the plantar pressure classification task shows high performance in most indices when comparing with other methods. The transfer learning-based method can be applied to other insufficient data-sets of sensor imaging fields.
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