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Infrared Image Segmentation Algorithm Using Histogram-Based Self-adaptive K-means Clustering

机译:基于直方图的自适应k-merical聚类的红外图像分割算法

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For the problem that the different parameters of infrared imaging equipment and the environment around the target cause the poor robustness of threshold value automatic acquisition method in infrared human target segmentation algorithm, starting from the principle of infrared imagery and connecting with the characteristics of the histogram and K-means clustering algorithm, we propose an infrared image segmentation algorithm using histogram-based self-adaptive K-means clustering. We use histogram peaks to determine the K' value of K-means clustering and select the grey values corresponding to this K peaks as the K initial cluster center values of clustering algorithm. After clustering, we select appropriate trough as a segmentation point through the cluster center's moving direction. This algorithm does not require to balance the image beforehand and to suppose background distribution. The experimental results show that the algorithm is simple and flexible, easy to implement, and has good robustness.
机译:对于红外成像设备的不同参数和围绕目标的环境导致红外人目标分割算法中的阈值自动采集方法的稳健性较差,从红外图像原理开始,与直方图的特征连接K-means聚类算法,我们使用基于直方图的自适应k-merse群集提出了一种红外图像分割算法。我们使用直方图峰值来确定K-means群集的K'值,并选择与该k峰值相对应的灰度值作为聚类算法的k初始群集中心值。在聚类之后,我们通过群集中心的移动方向选择合适的槽作为分段点。此算法不需要预先平衡图像并假设背景分布。实验结果表明,该算法简单灵活,易于实施,具有良好的鲁棒性。

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