Realization of Halcon Image Segmentation Algorithm in Machine Vision for Complex Scenarios

L. Ke
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Abstract

In the complex real world, with the application and popularization of the intelligent systems and information platforms, complex image recognition and segmentation need to be paid attention to. Therefore, this paper studies the realization of Halcon image segmentation algorithm in machine vision for complex scenarios. Firstly, the image complexity is analyzed. The core reason for firstly analyzing the image complex modelling is that for different images with the segmentation task, the training sets are different. Through the classification of the image complexity, different training and experimental sets can be targeted for performing the real-time tasks, and then, a novel complexity level model is defined. Then, a 2-step segmentation algorithm is proposed. For the simple and complex images, the segmentation models are different to make the comprehensive model efficient. For the complex image, the Selection of Cluster Number algorithm is applied. The proposed experiment compares the proposed model with the FCM, KFCM and SVM and the results have shown that the designed model is efficient considering different factors.
复杂场景下Halcon图像分割算法的机器视觉实现
在复杂的现实世界中,随着智能系统和信息平台的应用和普及,复杂的图像识别和分割需要得到重视。因此,本文研究了复杂场景下机器视觉中Halcon图像分割算法的实现。首先,分析了图像的复杂度。首先分析图像复杂建模的核心原因是,对于具有分割任务的不同图像,训练集是不同的。通过对图像复杂度的分类,可以针对不同的训练集和实验集来执行实时任务,从而定义了一种新的复杂度等级模型。然后,提出了一种两步分割算法。对于简单图像和复杂图像,采用不同的分割模型,使综合模型更加高效。对于复杂图像,采用聚类数选择算法。实验将所提出的模型与FCM、KFCM和SVM进行了比较,结果表明,考虑不同因素,所设计的模型是有效的。
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