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FRD-CNN: Object detection based on small-scale convolutional neural networks and feature reuse

机译:FRD-CNN:基于小型卷积神经网络的对象检测和功能重用

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Most of the recent successful object detection methods have been based on convolutional neural networks (CNNs). From previous studies, we learned that many feature reuse methods improve the network performance, but they increase the number of parameters. DenseNet uses thin layers that have fewer channels to alleviate the increase in parameters. This motivated us to find other methods for solving the increase in model size problems introduced by feature reuse methods. In this work, we employ different feature reuse methods on fire units and mobile units. We solved the problem and constructed two novel neural networks, fire-FRD-CNN and mobile-FRD-CNN. We conducted experiments with the proposed neural networks on KITTI and PASCAL VOC datasets.
机译:最近的大多数成功的物体检测方法已经基于卷积神经网络(CNN)。来自以前的研究,我们了解到许多功能重用方法可以提高网络性能,但它们增加了参数的数量。 DenSenet使用具有更少频道的薄层来缓解参数的增加。这激励我们找到解决特征重用方法引入的模型大小问题的增加的其他方法。在这项工作中,我们在Fire单元和移动单元上使用不同的功能重用方法。我们解决了这个问题,构建了两种新型神经网络,FIR-FRD-CNN和移动式FNN。我们在Kitti和Pascal VOC数据集上与拟议的神经网络进行了实验。

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