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Fused Deep Convolutional Neural Networks Based on Voting Approach for Efficient Object Classification

机译:基于投票方法的融合深度卷积神经网络,以实现高效对象分类

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Object classification has been one of the main tasks in computer vision. With the fast development of deep learning, its performance in image classification and object recognition has presented dramatic improvements. In this paper, we propose a new deep convolutional neural network (CNN) architecture for robust object classification. The proposed model is fused with three traditional CNN approaches, Densenet201, Resnet50, and our proposed residual CNN. The fused network architecture allows parallel processing of the multiple networks for keeping the system sped up. A single shot deep convolution network is trained as an object detector to generate all possible candidates of different object classes. The output of each neural network is representing a single vote that is used in the classification process. 3-to-1 voting criteria are applied in the final classification decision between the candidate object classes. Several experiments were conducted to evaluate the performance of the proposed network. The experimental results show that the proposed approach has better performance than the networks used in the fusion process when they act individually. It also has lower miss rates when compared to several states of art methodologies.
机译:对象分类是计算机视觉中的主要任务之一。随着深度学习的快速发展,其在图像分类和对象识别中的性能呈现了戏剧性的改进。在本文中,我们提出了一种新的深度卷积神经网络(CNN)架构,用于鲁棒对象分类。所提出的模型与三种传统的CNN方法,Densenet201,Reset50和我们提出的残留CNN融合。融合网络架构允许对多个网络的并行处理来保持系统加速。单次拍摄深度卷积网络被培训为对象检测器,以生成不同对象类的所有可能的候选候选者。每个神经网络的输出代表分类过程中使用的单个投票。在候选对象类之间的最终分类决策中应用了3〜1投票标准。进行了几个实验以评估所提出的网络的性能。实验结果表明,当单独行动时,所提出的方法具有比融合过程中使用的网络的性能更好。与几个艺术方法的州相比,它也有较低的错过率。

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