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D dNet-65 R-CNN: Object Detection Model Fusing Deep Dilated Convolutions and Light-Weight Networks

机译:D dNet-65 R-CNN:融合深度膨胀卷积和轻型网络的对象检测模型

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In recent years, object detection has become a popular direction of computer vision and digital image processing. All the research work in this paper is a two-stage object detection algorithm based on deep learning. First, this paper proposes the Deep_Dilated Convolution Network (D_dNet). That is, by adding the operation of dilated convolution into the backbone network, in this way, not only the number of training parameters can be further reduced, but also the resolution of feature map and the size of receptive field can be improved. Second, the Fully Convolutional Layer (FC) is usually involved in the re-identification process of region proposal in the traditional object detection. This too "thick" network structure will easily lead to reduced detection speed and excessive computation. Therefore, the feature map before training is compressed in this paper to establish a light-weight network. Then, transfer learning method is introduced in training network to optimize the model. The whole experiment is evaluated based on MSCOCO dataset. Experiments show that the accuracy of the proposed model is improved by 1.3 to 2.2% points.
机译:近年来,目标检测已成为计算机视觉和数字图像处理的流行方向。本文所有的研究工作都是基于深度学习的两阶段目标检测算法。首先,本文提出了深层卷积网络(D_dNet)。即,通过将膨胀卷积的操作添加到骨干网络中,以这种方式,不仅可以进一步减少训练参数的数量,而且可以提高特征图的分辨率和接收场的大小。其次,在传统的目标检测中,全卷积层(FC)通常参与区域提议的重新识别过程。这种太“厚”的网络结构将很容易导致检测速度降低和计算量过多。因此,本文将训练前的特征图进行压缩,以建立一个轻量级的网络。然后,在训练网络中引入了转移学习方法,对模型进行了优化。整个实验是基于MSCOCO数据集进行评估的。实验表明,所提模型的准确性提高了1.3%至2.2%。

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