利用CNN和LSTM方法提高图像字幕质量

M. Pradeepan Lala, D. Kumar
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引用次数: 0

摘要

在图像标题中,通过描述图片的含义来改善图像的内容是一个挑战,因为它不仅要让用户理解,而且要用简短而清晰的句子来描述。提出的解决方案使用CNN和LSTM作为编码器中的字幕模型,并使用解码器方法将图像翻译成句子。通过添加深度卷积层来修改异常架构。基于swish和mish创建了一个自定义激活函数。CNN用于特征提取,RNN用于序列预测,LSTM用于将单词框架成句子。在二维图像数据集(如从flicker8k数据集中提取的狗类数据和通过网络摄像头捕获的实时图像)上验证了所提出的工作。训练/测试表明,根据BLEU@I参数,损失值、标题预测时间和标题质量都有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the Quality of Image Captioning using CNN and LSTM Method
In image captioning improving the content of the image by describing the meaning of the picture is a challenge as it should not only be understandable to the user but also described in a short and clear sentence. The proposed solution uses CNN and LSTM as captioning models in an Encoder and the Decoder methodology is used to translate an image into a sentence. The Xception architecture is modified by adding a depth wise convolution layer. A custom activation function is created based on swish and mish. CNN is used for feature extraction, RNN is used for sequence prediction, and LSTM for framing the words into a sentence. The proposed work is validated on two-dimensional image datasets such as dog category data extracted from the flicker8k dataset and real-time images captured through a webcam. The training/testing shows improved loss value, caption prediction time, and an increase in the quality of caption in terms of the BLEU@I parameter.
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