CVAILGNov 16, 2021

INTERN: A New Learning Paradigm Towards General Vision

arXiv:2111.08687v239 citations
Originality Highly original
AI Analysis

This addresses the problem of data inefficiency in AI for computer vision practitioners, offering a potentially transformative approach rather than an incremental improvement.

The paper tackles the challenge of high data costs for training new AI models for each scenario by introducing INTERN, a new learning paradigm that uses multi-source, multi-stage supervision to improve generalizability. The model, adapted with only 10% of target domain data, outperforms models trained on full datasets across 26 computer vision tasks.

Enormous waves of technological innovations over the past several years, marked by the advances in AI technologies, are profoundly reshaping the industry and the society. However, down the road, a key challenge awaits us, that is, our capability of meeting rapidly-growing scenario-specific demands is severely limited by the cost of acquiring a commensurate amount of training data. This difficult situation is in essence due to limitations of the mainstream learning paradigm: we need to train a new model for each new scenario, based on a large quantity of well-annotated data and commonly from scratch. In tackling this fundamental problem, we move beyond and develop a new learning paradigm named INTERN. By learning with supervisory signals from multiple sources in multiple stages, the model being trained will develop strong generalizability. We evaluate our model on 26 well-known datasets that cover four categories of tasks in computer vision. In most cases, our models, adapted with only 10% of the training data in the target domain, outperform the counterparts trained with the full set of data, often by a significant margin. This is an important step towards a promising prospect where such a model with general vision capability can dramatically reduce our reliance on data, thus expediting the adoption of AI technologies. Furthermore, revolving around our new paradigm, we also introduce a new data system, a new architecture, and a new benchmark, which, together, form a general vision ecosystem to support its future development in an open and inclusive manner. See project website at https://opengvlab.shlab.org.cn .

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