CVJul 27, 2022

ALBench: A Framework for Evaluating Active Learning in Object Detection

arXiv:2207.13339v38 citationsh-index: 58
Originality Synthesis-oriented
AI Analysis

This work provides a tool for researchers to objectively compare active learning algorithms in object detection, though it is incremental as it builds on existing methods without introducing new algorithms.

The paper introduces ALBench, a benchmark framework for evaluating active learning in object detection, addressing the lack of standardized comparisons due to varied settings in existing approaches.

Active learning is an important technology for automated machine learning systems. In contrast to Neural Architecture Search (NAS) which aims at automating neural network architecture design, active learning aims at automating training data selection. It is especially critical for training a long-tailed task, in which positive samples are sparsely distributed. Active learning alleviates the expensive data annotation issue through incrementally training models powered with efficient data selection. Instead of annotating all unlabeled samples, it iteratively selects and annotates the most valuable samples. Active learning has been popular in image classification, but has not been fully explored in object detection. Most of current approaches on object detection are evaluated with different settings, making it difficult to fairly compare their performance. To facilitate the research in this field, this paper contributes an active learning benchmark framework named as ALBench for evaluating active learning in object detection. Developed on an automatic deep model training system, this ALBench framework is easy-to-use, compatible with different active learning algorithms, and ensures the same training and testing protocols. We hope this automated benchmark system help researchers to easily reproduce literature's performance and have objective comparisons with prior arts. The code will be release through Github.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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