面向开放词汇对象检测的语言引导负样本挖掘

Yu-Wen Tseng, Hong-Han Shuai, Ching-Chun Huang, Yung-Hui Li, Wen-Huang Cheng
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引用次数: 0

摘要

在计算机视觉领域,物体检测是一项具有重要意义的基本感知任务。传统的物体检测框架由于无法识别训练数据集中不存在的物体类别而受到限制,这对于经常遇到新物体的实际应用来说是一个重大缺陷。为了解决固有的适应性不足问题,人们引入了更复杂的范式,如零镜头和开放词汇对象检测。特别是开放词汇对象检测,通常需要辅助图像-文本配对数据来加强模型训练。我们的研究提出了一种创新方法,通过从负样本池中挖掘潜在的未标记对象来完善训练过程。我们利用大规模视觉语言模型,利用分类分数的熵来选择性地识别和注释以前未标记的样本,然后将它们纳入训练方案。这种新颖的方法使我们的模型在具有挑战性的 MSCOCO 数据集上达到了具有竞争力的性能基准,与最先进的结果不相上下,同时无需额外的数据或补充训练程序。
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Language-Guided Negative Sample Mining for Open-Vocabulary Object Detection
In the domain of computer vision, object detection serves as a fundamental perceptual task with critical implications. Traditional object detection frameworks are limited by their inability to recognize object classes not present in their training datasets, a significant drawback for practical applications where encountering novel objects is commonplace. To address the inherent lack of adaptability, more sophisticated paradigms such as zero-shot and open-vocabulary object detection have been introduced. Open-vocabulary object detection, in particular, often necessitates auxiliary image-text paired data to enhance model training. Our research proposes an innovative approach that refines the training process by mining potential unlabeled objects from negative sample pools. Leveraging a large-scale vision-language model, we harness the entropy of classification scores to selectively identify and annotate previously unlabeled samples, subsequently incorporating them into the training regimen. This novel methodology empowers our model to attain competitive performance benchmarks on the challenging MSCOCO dataset, matching state-of-the-art outcomes, while obviating the need for additional data or supplementary training procedures.
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