LGCVNov 27, 2022

Deep Active Learning for Computer Vision: Past and Future

arXiv:2211.14819v229 citationsh-index: 49
Originality Synthesis-oriented
AI Analysis

It addresses the need for efficient data selection in deep learning to scale AI production, but is incremental as a review paper.

This paper reviews deep active learning for computer vision, covering technical advancements, applications, industrial systems, and future directions, aiming to highlight its significance in AI model development and encourage more research.

As an important data selection schema, active learning emerges as the essential component when iterating an Artificial Intelligence (AI) model. It becomes even more critical given the dominance of deep neural network based models, which are composed of a large number of parameters and data hungry, in application. Despite its indispensable role for developing AI models, research on active learning is not as intensive as other research directions. In this paper, we present a review of active learning through deep active learning approaches from the following perspectives: 1) technical advancements in active learning, 2) applications of active learning in computer vision, 3) industrial systems leveraging or with potential to leverage active learning for data iteration, 4) current limitations and future research directions. We expect this paper to clarify the significance of active learning in a modern AI model manufacturing process and to bring additional research attention to active learning. By addressing data automation challenges and coping with automated machine learning systems, active learning will facilitate democratization of AI technologies by boosting model production at scale.

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