CVJun 19, 2022

What is Where by Looking: Weakly-Supervised Open-World Phrase-Grounding without Text Inputs

Meta AI
arXiv:2206.09358v225 citationsh-index: 63Has Code
Originality Incremental advance
AI Analysis

This work addresses the challenge of visual understanding in open-world scenarios for computer vision applications, presenting a novel task but with incremental technical contributions.

The paper tackles the problem of open-world phrase-grounding without text inputs by using only an image to return bounding boxes and descriptive phrases for objects, even those not seen during training, and shows it outperforms state-of-the-art methods in weakly supervised segmentation and phrase-grounding with modest degradation compared to methods using human captions.

Given an input image, and nothing else, our method returns the bounding boxes of objects in the image and phrases that describe the objects. This is achieved within an open world paradigm, in which the objects in the input image may not have been encountered during the training of the localization mechanism. Moreover, training takes place in a weakly supervised setting, where no bounding boxes are provided. To achieve this, our method combines two pre-trained networks: the CLIP image-to-text matching score and the BLIP image captioning tool. Training takes place on COCO images and their captions and is based on CLIP. Then, during inference, BLIP is used to generate a hypothesis regarding various regions of the current image. Our work generalizes weakly supervised segmentation and phrase grounding and is shown empirically to outperform the state of the art in both domains. It also shows very convincing results in the novel task of weakly-supervised open-world purely visual phrase-grounding presented in our work. For example, on the datasets used for benchmarking phrase-grounding, our method results in a very modest degradation in comparison to methods that employ human captions as an additional input. Our code is available at https://github.com/talshaharabany/what-is-where-by-looking and a live demo can be found at https://replicate.com/talshaharabany/what-is-where-by-looking.

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