Multimodal Image Captioning for Marketing Analysis

Philipp Harzig, Stephan Brehm, R. Lienhart, Carolin Kaiser, René Schallner
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引用次数: 10

Abstract

Automatically captioning images with natural language sentences is an important research topic. State of the art models are able to produce human-like sentences. These models typically describe the depicted scene as a whole and do not target specific objects of interest or emotional relationships between these objects in the image. However, marketing companies require to describe these important attributes of a given scene. In our case, objects of interest are consumer goods, which are usually identifiable by a product logo and are associated with certain brands. From a marketing point of view, it is desirable to also evaluate the emotional context of a trademarked product, i.e., whether it appears in a positive or a negative connotation. We address the problem of finding brands in images and deriving corresponding captions by introducing a modified image captioning network. We also add a third output modality, which simultaneously produces real-valued image ratings. Our network is trained using a classification-aware loss function in order to stimulate the generation of sentences with an emphasis on words identifying the brand of a product. We evaluate our model on a dataset of images depicting interactions between humans and branded products. The introduced network improves mean class accuracy by 24.5 percent. Thanks to adding the third output modality, it also considerably improves the quality of generated captions for images depicting branded products.
营销分析的多模态图像字幕
用自然语言句子自动为图像配图是一个重要的研究课题。最先进的模型能够产生类似人类的句子。这些模型通常将所描绘的场景作为一个整体来描述,并不针对图像中感兴趣的特定对象或这些对象之间的情感关系。然而,营销公司需要描述给定场景的这些重要属性。在我们的案例中,感兴趣的对象是消费品,通常可以通过产品徽标识别,并与某些品牌相关联。从营销的角度来看,还需要评估商标产品的情感背景,即,它是否以积极或消极的内涵出现。我们通过引入一个改进的图像字幕网络来解决在图像中找到品牌并获得相应字幕的问题。我们还添加了第三种输出模式,它同时产生实值图像评级。我们的网络使用分类感知损失函数进行训练,以刺激句子的生成,重点是识别产品品牌的单词。我们在描述人类与品牌产品之间相互作用的图像数据集上评估我们的模型。所引入的网络将平均分类准确率提高了24.5%。由于添加了第三种输出模式,它也大大提高了为描述品牌产品的图像生成的字幕的质量。
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