Precision-Enhanced Image Attribute Prediction Model

Chen Hu, J. Miao, Zhuo Su, X. Shi, Qiang Chen, Xiaonan Luo
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引用次数: 2

Abstract

High-precision attribute prediction is a challenging issue due to the complex object and scene variations. Targeting on enhancing attribute prediction precision, we propose an Enhanced Attribute Prediction-Latent Dirichlet Allocation (EAP-LDA) model to address this issue. EAP-LDA model enhances the attribute prediction precision in two steps: classification adaptation and prediction enhancement. In classification adaptation, we transfer image low-level features to mid-level features (attributes) by the SVM classifiers, which are trained using the low-level features extracted from images. In prediction enhancement, we first exploit its advantages in extracting and analyzing the topic information between image samples and attributes by the LDA topic model. We then use a strategy to search the nearest neighbor image collection from test datasets by KNN. Finally, we evaluate the accuracy onHAT datasets and demonstrate significant improvement over the baseline algorithm.
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精度增强图像属性预测模型
由于目标和场景的复杂变化,高精度的属性预测是一个具有挑战性的问题。以提高属性预测精度为目标,提出了一种增强属性预测-潜狄利克雷分配(EAP-LDA)模型。EAP-LDA模型通过分类自适应和预测增强两步提高属性预测精度。在分类自适应中,我们使用从图像中提取的低级特征训练SVM分类器,将图像的低级特征转换为中级特征(属性)。在预测增强方面,我们首先利用LDA主题模型提取和分析图像样本和属性之间的主题信息的优势。然后,我们使用一种策略,通过KNN从测试数据集中搜索最近邻图像集合。最后,我们评估了hat数据集上的准确性,并证明了比基线算法有显著改进。
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