Two-Stage Ensemble of Deep Convolutional Neural Networks for Object Recognition

Rom Uddamvathanak, Feng Yang, Xulei Yang, A. Das, Yan Shen, Mohamed Salahuddin, Shaista Hussain, S. Chawla
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引用次数: 2

Abstract

Deep Convolutional Neural Networks (CNNs) have been widely used for object recognition in images. However, due to the complexity in setting the structures and related parameters for deep CNNs, performance of individual CNN models may vary largely and lack robustness. In realizing this problem, this paper proposed a two-stage ensemble of deep CNNs for object recognition. To increase model diversity for ensemble, multiple basic CNN models/structures are first pre-defined. For each basic CNN model, multiple rounds of training are conducted based on sub-sampling the training dataset. In the first stage of ensemble, multiple outputs from each basic CNN model is integrated using the MinMax median. This is followed by the second stage of ensemble to combine the outputs from all basic CNN models. The proposed method was implemented and experiments were carried out on Kaggle’s ‘Statoil/CCORE Iceberg Classifier Challenge’ image data for iceberg and ship recognition, as well as on ‘Northeastern University surface defect dataset’ for surface defect classification problem. The experimental results showed that the proposed ensemble method outperformed the individual CNN models, and achieved the-state-of-the-art performance as compared to the best submission to the Kaggle’s challenge using CNNs.
用于对象识别的深度卷积神经网络两阶段集成
深度卷积神经网络(cnn)已广泛应用于图像中的目标识别。然而,由于深度CNN的结构和相关参数设置的复杂性,单个CNN模型的性能可能相差很大,缺乏鲁棒性。为了解决这一问题,本文提出了一种用于目标识别的深度cnn两阶段集成。为了增加集成的模型多样性,首先预先定义多个基本CNN模型/结构。对于每个基本CNN模型,基于训练数据集的子采样进行多轮训练。在集成的第一阶段,使用MinMax中值对每个基本CNN模型的多个输出进行集成。接下来是第二阶段的集成,将所有基本CNN模型的输出组合起来。在Kaggle的“Statoil/CCORE Iceberg Classifier Challenge”冰山和船舶识别图像数据以及“Northeastern University表面缺陷数据集”表面缺陷分类问题上实施了该方法并进行了实验。实验结果表明,所提出的集成方法优于单个CNN模型,并且与使用CNN的最佳提交Kaggle挑战相比,达到了最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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