Scene Classification Using Deep Networks Combined with Visual Attention

J. Sensors Pub Date : 2022-08-28 DOI:10.1155/2022/7191537
Jing Shi, Hong Zhu, Yuxing Li, Yanghui Li, Sen Du
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Abstract

In view of the scene’s complexity and diversity in scene classification, this paper makes full use of the contextual semantic relationships between the objects to describe the visual attention regions of the scenes and combines with the deep convolution neural networks, so that a scene classification model using visual attention and deep networks is constructed. Firstly, the visual attention regions in the scene image are marked by using the context-based saliency detection algorithm. Then, the original image and the visual attention region detection image are superimposed to obtain a visual attention region enhancement image. Furthermore, the deep convolution features of the original image, the visual attention region detection image, and the visual attention region enhancement image are extracted by using the deep convolution neural networks pretrained on the large-scale scene image dataset Places. Finally, the deep visual attention features are constructed by using the multilayer deep convolution features of the deep convolution networks, and a classification model is constructed. In order to verify the effectiveness of the proposed model, the experiments are carried out on four standard scene datasets LabelMe, UIUC-Sports, Scene-15, and MIT67. The results show that the proposed model improves the performance of the classification well and has good adaptability.
结合视觉注意的深度网络场景分类
针对场景分类的复杂性和多样性,本文充分利用对象之间的语境语义关系来描述场景的视觉注意区域,并结合深度卷积神经网络,构建了视觉注意与深度网络相结合的场景分类模型。首先,利用基于上下文的显著性检测算法对场景图像中的视觉注意区域进行标记;然后,将原始图像与视觉注意区域检测图像叠加,得到视觉注意区域增强图像。利用大规模场景图像数据集Places预训练的深度卷积神经网络提取原始图像、视觉注意区域检测图像和视觉注意区域增强图像的深度卷积特征。最后,利用深度卷积网络的多层深度卷积特征构建深度视觉注意特征,并构建分类模型。为了验证该模型的有效性,在LabelMe、UIUC-Sports、scene -15和MIT67四个标准场景数据集上进行了实验。结果表明,该模型较好地提高了分类性能,具有良好的适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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