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Can Neural Image Captioning be Controlled via Forced Attention?

2019-11-10 14:00:27
Philipp Sadler, Tatjana Scheffler, David Schlangen

Abstract

Learned dynamic weighting of the conditioning signal (attention) has been shown to improve neural language generation in a variety of settings. The weights applied when generating a particular output sequence have also been viewed as providing a potentially explanatory insight into the internal workings of the generator. In this paper, we reverse the direction of this connection and ask whether through the control of the attention of the model we can control its output. Specifically, we take a standard neural image captioning model that uses attention, and fix the attention to pre-determined areas in the image. We evaluate whether the resulting output is more likely to mention the class of the object in that area than the normally generated caption. We introduce three effective methods to control the attention and find that these are producing expected results in up to 28.56% of the cases.

Abstract (translated)

URL

https://arxiv.org/abs/1911.03936

PDF

https://arxiv.org/pdf/1911.03936.pdf


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