School of Engineering, University of KwaZulu-Natal, Durban 4041, South Africa.
Sensors (Basel). 2022 Feb 23;22(5):1728. doi: 10.3390/s22051728.
This paper presents a novel candidate generation algorithm for pedestrian detection in infrared surveillance videos. The proposed method uses a combination of histogram specification and iterative histogram partitioning to progressively adjust the dynamic range and efficiently suppress the background of each video frame. This pairing eliminates the general-purpose nature associated with histogram partitioning where chosen thresholds, although reasonable, are usually not suitable for specific purposes. Moreover, as the initial threshold value chosen by histogram partitioning is sensitive to the shape of the histogram, specifying a uniformly distributed histogram before initial partitioning provides a stable histogram shape. This ensures that pedestrians are present in the image at the convergence point of the algorithm. The performance of the method is tested using four publicly available thermal datasets. Experiments were performed with images from four publicly available databases. The results show the improvement of the proposed method over thresholding with minimum-cross entropy, the robustness across images acquired under different conditions, and the comparable results with other methods in the literature.
本文提出了一种新的候选生成算法,用于红外监控视频中的行人检测。该方法结合了直方图规范和迭代直方图分区,逐步调整动态范围,有效地抑制了每一帧视频的背景。这种组合消除了与直方图分区相关的通用性,其中选择的阈值虽然合理,但通常不适合特定用途。此外,由于直方图分区选择的初始阈值对直方图的形状敏感,因此在初始分区之前指定均匀分布的直方图可以提供稳定的直方图形状。这可以确保在算法的收敛点处图像中存在行人。该方法的性能使用四个公开可用的热数据集进行了测试。实验是在来自四个公开数据库的图像上进行的。结果表明,与最小交叉熵阈值处理相比,该方法在不同条件下获取的图像中具有更好的稳健性,并且与文献中的其他方法相比具有可比的结果。