卷积全连接胶囊网络(CFC-CapsNet)

Pouya Shiri, A. Baniasadi
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引用次数: 5

摘要

胶囊网络(Capsule Networks, CapsNets)是新一代的分类器,与之前的分类器相比具有许多优点。这些优点包括对仿射变换数据集的更高鲁棒性和重叠图像的检测。capnet虽然在MNIST数字识别数据集上获得了最先进的精度,但在其他数据集上却落后于卷积神经网络(cnn)。此外,与cnn相比,capnet速度较慢。在这项工作中,我们提出卷积全连接(CFC) CapsNet作为传统CapsNet的另一种增强架构[8]。CFC-CapsNet是一个更高效的网络:与传统的CapsNet相比,训练和测试执行得更快,准确性略高。CFC-CapsNet包含较少的可训练权值(参数),因此在内存使用方面更有效。CFC-CapsNet的代码可在Github 1上获得。
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Convolutional Fully-Connected Capsule Network (CFC-CapsNet)
Capsule Networks (CapsNets) are the new generation of classifiers with several advantages over the previous ones. Such advantages include higher robustness to affine transformed datasets and detection of overlapping images. CapsNets, while obtaining state-of-the-art accuracy on the MNIST digit recognition dataset, fall behind Convolutional Neural Networks (CNNs) for other datasets. Moreover, CapsNets are slow compared to CNNs. In this work, we propose Convolutional Fully Connected (CFC) CapsNet as an alternative enhanced architecture to conventional CapsNet [8]. CFC-CapsNet is a more efficient network: training and testing are performed faster and a slightly higher accuracy is achieved compared to the conventional CapsNet. CFC-CapsNet includes fewer trainable weights (parameters) and therefore is more efficient in terms of memory usage. The code for CFC-CapsNet is available on Github 1.
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