934 research outputs found
Deep Reinforcement Learning-based Image Captioning with Embedding Reward
Image captioning is a challenging problem owing to the complexity in
understanding the image content and diverse ways of describing it in natural
language. Recent advances in deep neural networks have substantially improved
the performance of this task. Most state-of-the-art approaches follow an
encoder-decoder framework, which generates captions using a sequential
recurrent prediction model. However, in this paper, we introduce a novel
decision-making framework for image captioning. We utilize a "policy network"
and a "value network" to collaboratively generate captions. The policy network
serves as a local guidance by providing the confidence of predicting the next
word according to the current state. Additionally, the value network serves as
a global and lookahead guidance by evaluating all possible extensions of the
current state. In essence, it adjusts the goal of predicting the correct words
towards the goal of generating captions similar to the ground truth captions.
We train both networks using an actor-critic reinforcement learning model, with
a novel reward defined by visual-semantic embedding. Extensive experiments and
analyses on the Microsoft COCO dataset show that the proposed framework
outperforms state-of-the-art approaches across different evaluation metrics
Hierarchically Structured Reinforcement Learning for Topically Coherent Visual Story Generation
We propose a hierarchically structured reinforcement learning approach to
address the challenges of planning for generating coherent multi-sentence
stories for the visual storytelling task. Within our framework, the task of
generating a story given a sequence of images is divided across a two-level
hierarchical decoder. The high-level decoder constructs a plan by generating a
semantic concept (i.e., topic) for each image in sequence. The low-level
decoder generates a sentence for each image using a semantic compositional
network, which effectively grounds the sentence generation conditioned on the
topic. The two decoders are jointly trained end-to-end using reinforcement
learning. We evaluate our model on the visual storytelling (VIST) dataset.
Empirical results from both automatic and human evaluations demonstrate that
the proposed hierarchically structured reinforced training achieves
significantly better performance compared to a strong flat deep reinforcement
learning baseline.Comment: Accepted to AAAI 201
Video Captioning via Hierarchical Reinforcement Learning
Video captioning is the task of automatically generating a textual
description of the actions in a video. Although previous work (e.g.
sequence-to-sequence model) has shown promising results in abstracting a coarse
description of a short video, it is still very challenging to caption a video
containing multiple fine-grained actions with a detailed description. This
paper aims to address the challenge by proposing a novel hierarchical
reinforcement learning framework for video captioning, where a high-level
Manager module learns to design sub-goals and a low-level Worker module
recognizes the primitive actions to fulfill the sub-goal. With this
compositional framework to reinforce video captioning at different levels, our
approach significantly outperforms all the baseline methods on a newly
introduced large-scale dataset for fine-grained video captioning. Furthermore,
our non-ensemble model has already achieved the state-of-the-art results on the
widely-used MSR-VTT dataset.Comment: CVPR 2018, with supplementary materia
Video Storytelling: Textual Summaries for Events
Bridging vision and natural language is a longstanding goal in computer
vision and multimedia research. While earlier works focus on generating a
single-sentence description for visual content, recent works have studied
paragraph generation. In this work, we introduce the problem of video
storytelling, which aims at generating coherent and succinct stories for long
videos. Video storytelling introduces new challenges, mainly due to the
diversity of the story and the length and complexity of the video. We propose
novel methods to address the challenges. First, we propose a context-aware
framework for multimodal embedding learning, where we design a Residual
Bidirectional Recurrent Neural Network to leverage contextual information from
past and future. Second, we propose a Narrator model to discover the underlying
storyline. The Narrator is formulated as a reinforcement learning agent which
is trained by directly optimizing the textual metric of the generated story. We
evaluate our method on the Video Story dataset, a new dataset that we have
collected to enable the study. We compare our method with multiple
state-of-the-art baselines, and show that our method achieves better
performance, in terms of quantitative measures and user study.Comment: Published in IEEE Transactions on Multimedi
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