Zero-shot capability has been considered as a new revolution of deep learning, letting machines work on tasks without curated training data. As a good start and the only existing outcome of zero-shot image captioning (IC), ZeroCap abandons supervised training and sequentially searches every word in the caption using the knowledge of large-scale pretrained models. Though effective, its autoregressive generation and gradient-directed searching mechanism limit the diversity of captions and inference speed, respectively. Moreover, ZeroCap does not consider the controllability issue of zero-shot IC. To move forward, we propose a framework for Controllable Zero-shot IC, named ConZIC. The core of ConZIC is a novel sampling-based non-autoregressive language model named GibbsBERT, which can generate and continuously polish every word. Extensive quantitative and qualitative results demonstrate the superior performance of our proposed ConZIC for both zero-shot IC and controllable zero-shot IC. Especially, ConZIC achieves about 5x faster generation speed than ZeroCap, and about 1.5x higher diversity scores, with accurate generation given different control signals.
ConZIC: Controllable Zero-shot Image Captioning by Sampling-Based Polishing
ConZIC, a new framework for controllable zero-shot image captioning, uses a non-autoregressive language model to enhance generation speed and diversity compared to existing methods.
- Year
- 2023
- Venue
- CVPR 2023 1
- Authors
- 6
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2303.02437v2ARXIV-DEFAULT
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