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Multi-layer fusion in a convolutional neural network for image classification

机译:卷积神经网络中的多层融合用于图像分类

摘要

A method and system for domain adaptation based on multi-layer fusion in a convolutional neural network architecture for feature extraction and a two-step training and fine-tuning scheme. The architecture concatenates features extracted at different depths of the network to form a fully connected layer before the classification step. First, the network is trained with a large set of images from a source domain as a feature extractor. Second, for each new domain (including the source domain), the classification step is fine-tuned with images collected from the corresponding site. The features from different depths are concatenated with and fine-tuned with weights adjusted for a specific task. The architecture is used for classifying high occupancy vehicle images.
机译:在卷积神经网络架构中基于多层融合的域自适应方法和系统,用于特征提取和两步训练和微调方案。该体系结构将在网络的不同深度处提取的特征进行连接,以在分类步骤之前形成一个完全连接的层。首先,使用来自源域的大量图像作为特征提取器来训练网络。其次,对于每个新域(包括源域),使用从相应站点收集的图像对分类步骤进行微调。将来自不同深度的要素串联在一起,并根据针对特定任务调整的权重进行微调。该体系结构用于对高占用率车辆图像进行分类。

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