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Selective Multi-Convolutional Region Feature Extraction based Iterative Discrimination CNN for Fine-Grained Vehicle Model Recognition

机译:基于选择性多卷积区域特征提取的迭代识别CNN用于细颗粒车辆模型识别

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With the rapid rise of computer vision and driverless technology, vehicle model recognition plays a huge role in the common application and industry field. While fine-grained vehicle model recognition is often influenced by multi-level information, such as the image perspective, inter-feature similarity, vehicle details. Furthermore, pivotal regions extraction and fine-grained feature learning have become a vital obstacle to the fine-grained recognition of vehicle models. In this paper, we propose an iterative discrimination CNN (ID-CNN) based on selective multi-convolutional region (SMCR) feature extraction. The SMCR features, which consist of global and local SMCR features, are extracted from the original image with higher activation response value. As for ID-CNN, we use the global and local SMCR features iteratively to localize deep pivotal features and concatenate them together into a fully-connected fusion layer to predict the vehicle categories. We get better results and improve the accuracy to 91.8% on Stanford Cars-196 dataset and to 96.2% on CompCars dataset.
机译:随着计算机视觉和无人驾驶技术的迅猛发展,车辆模型识别在通用应用和行业领域中发挥着巨大作用。虽然细粒度的车辆模型识别通常会受到多级信息的影响,例如图像透视,特征间相似度,车辆细节。此外,关键区域提取和细粒度特征学习已成为车辆模型细粒度识别的重要障碍。在本文中,我们提出了基于选择性多卷积区域(SMCR)特征提取的迭代鉴别CNN(ID-CNN)。从全局和局部SMCR功能组成的SMCR功能是从具有较高激活响应值的原始图像中提取的。对于ID-CNN,我们迭代地使用全局和局部SMCR特征来定位较深的关键特征,并将它们连接在一起成为一个完全连接的融合层,以预测车辆类别。我们得到了更好的结果,并且在Stanford Cars-196数据集上的准确性提高到91.8%,在CompCars数据集上的准确性提高到96.2%。

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