Open-Set Bottle Classifying using a Convolution Neural Network

Supanat Jintawatsakoon, Werayuth Charoenruengkit
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引用次数: 1

Abstract

A multi-class image classification application plays a vital role in our lives. Traditional approaches focus on a close-set classification problem. However, an open-set classification problem often occur in the real-world applications. This paper focuses on the convolution neural network based image classification for beverage bottle image classification under the open-set environment, in which the input image may not appear in any known classes during training time. The proposed models explore the approaches based on the N-Binary, N+unknown, and N+combination models. The results show that N+unknown approach perform better than that of the N+combination and N-Binary approach in terms of accuracy and time.
基于卷积神经网络的开集瓶分类
多类图像分类应用在我们的生活中起着至关重要的作用。传统方法关注的是一个紧集分类问题。然而,在实际应用中经常会遇到开集分类问题。本文主要研究基于卷积神经网络的图像分类方法,用于开集环境下的饮料瓶图像分类,该环境下输入图像在训练时间内可能不会出现在任何已知的类中。提出的模型探索了基于N-二进制、N+未知和N+组合模型的方法。结果表明,N+未知方法在精度和时间上优于N+组合方法和N-二进制方法。
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