Recently, single-frame infrared small target (SIRST) detection with single point supervision has drawn wide-spread attention. However, the latest label evolution with single point supervision (LESPS) framework suffers from instability, excessive label evolution, and difficulty in exerting embedded network performance. Inspired by organisms gradually adapting to their environment and continuously accumulating knowledge, we construct an innovative Progressive Active Learning (PAL) framework, which drives the existing SIRST detection networks progressively and actively recognizes and learns harder samples. Specifically, to avoid the early low-performance model leading to the wrong selection of hard samples, we propose a model pre-start concept, which focuses on automatically selecting a portion of easy samples and helping the model have basic task-specific learning capabilities. Meanwhile, we propose a refined dual-update strategy, which can promote reasonable learning of harder samples and continuous refinement of pseudo-labels. In addition, to alleviate the risk of excessive label evolution, a decay factor is reasonably introduced, which helps to achieve a dynamic balance between the expansion and contraction of target annotations. Extensive experiments show that existing SIRST detection networks equipped with our PAL framework have achieved state-of-the-art (SOTA) results on multiple public datasets. Furthermore, our PAL framework can build an efficient and stable bridge between full supervision and single point supervision tasks. Our code is available at https://github.com/YuChuang1205/PAL
翻译:近年来,基于单点监督的单帧红外小目标检测引起了广泛关注。然而,现有的单点监督标签演化框架存在不稳定性、标签演化过度以及难以充分发挥嵌入网络性能等问题。受生物体逐步适应环境并持续积累知识的启发,我们构建了一种创新的渐进式主动学习框架,该框架能够驱动现有红外小目标检测网络逐步、主动地识别并学习困难样本。具体而言,为避免早期低性能模型导致困难样本的错误选择,我们提出了模型预启动概念,其核心在于自动筛选部分简单样本,帮助模型建立基本的任务特定学习能力。同时,我们提出了一种精细化的双更新策略,既能促进困难样本的合理学习,又能实现伪标签的持续优化。此外,为缓解标签演化过度的风险,我们合理引入了衰减因子,有助于实现目标标注范围扩张与收缩之间的动态平衡。大量实验表明,现有红外小目标检测网络搭载本框架后,在多个公开数据集上均取得了最先进的检测效果。更重要的是,本框架能够在全监督与单点监督任务之间构建高效稳定的桥梁。代码已开源:https://github.com/YuChuang1205/PAL