基于CNN视觉特征的跨模态检索:一种新基线

Cross-Modal Retrieval With CNN Visual Features: A New Baseline

IEEE Transactions on Cybernetics · 2016
被引 386 · 同刊同年前 2%
ABS 3

中文导读

研究了使用CNN视觉特征进行跨模态检索,通过预训练和微调ImageNet模型,并提出了深度语义匹配方法,在五个数据集上验证了其优越性。

Abstract

Recently, convolutional neural network (CNN) visual features have demonstrated their powerful ability as a universal representation for various recognition tasks. In this paper, cross-modal retrieval with CNN visual features is implemented with several classic methods. Specifically, off-the-shelf CNN visual features are extracted from the CNN model, which is pretrained on ImageNet with more than one million images from 1000 object categories, as a generic image representation to tackle cross-modal retrieval. To further enhance the representational ability of CNN visual features, based on the pretrained CNN model on ImageNet, a fine-tuning step is performed by using the open source Caffe CNN library for each target data set. Besides, we propose a deep semantic matching method to address the cross-modal retrieval problem with respect to samples which are annotated with one or multiple labels. Extensive experiments on five popular publicly available data sets well demonstrate the superiority of CNN visual features for cross-modal retrieval.

计算机视觉深度学习跨模态检索图像表示