IEEE Trans Cybern. 2022 May;52(5):3957-3970. doi: 10.1109/TCYB.2020.3018120. Epub 2022 May 19.
Small aerial object detection plays an important role in numerous computer vision tasks, including remote sensing, early warning systems, and visual tracking. Despite existing moving object detection techniques that can achieve reasonable results in normal size objects, they fail to distinguish the small objects from the dynamic background. To cope with this issue, a novel method is proposed for accurate small aerial object detection under different situations. Initially, the block segmentation is introduced for reducing frame information redundancy. Meanwhile, a random projection feature (RPF) is proposed for characterizing blocks into feature vectors. Subsequently, a moving direction estimation based on feature vectors is presented to measure the motions of blocks and filter out the major directions. Finally, variable search region clustering (VSRC), together with the color feature difference, is designed for extracting pixelwise targets from the remaining moving direction blocks. The comprehensive experiments demonstrate that our approach outperforms the level of state-of-the-art methods upon the integrity of small aerial objects, especially on the dynamic background and scale variation targets.
小型空中目标检测在众多计算机视觉任务中起着重要作用,包括遥感、预警系统和视觉跟踪。尽管现有的运动目标检测技术可以在正常大小的目标上实现合理的结果,但它们无法将小目标与动态背景区分开来。为了解决这个问题,提出了一种新的方法,用于在不同情况下准确检测小型空中目标。首先,引入块分割来减少帧信息的冗余。同时,提出了一种随机投影特征(RPF)来将块特征化为特征向量。然后,提出了一种基于特征向量的运动方向估计方法,用于测量块的运动并滤除主要方向。最后,设计了可变搜索区域聚类(VSRC)和颜色特征差,用于从剩余的运动方向块中提取像素级目标。综合实验表明,我们的方法在小型空中目标的完整性方面优于最先进方法的水平,特别是在动态背景和尺度变化目标方面。