Ma Guangmei
School of Literature, Xi'an Siyuan University, Xi'an, China.
PLoS One. 2025 May 27;20(5):e0324504. doi: 10.1371/journal.pone.0324504. eCollection 2025.
In the information age, the effectiveness of image processing determines the quality of a large number of image analysis tasks. A fusion algorithm-based processing technique was proposed to process key image information. A feature dictionary was introduced as the matching template model and the standard model. The convolutional layer sampling feature block optimization was carried out using image segmentation ideas. The optimal threshold of the image to be segmented was obtained using the least squares method. The feature extraction layer was structurally supplemented and expressed at multiple scales in a two-dimensional linear graph. In the method training loss test, the research method achieved a loss value that dropped to near 0 after 32 iterations when training in low-contrast images. When testing the processing time of image key information, the research method achieved a processing time of 183ms when the image contained 6 features. When conducting scale ratio change testing, the research method achieved the highest image processing accuracy at a scale ratio of 1.0, which was 95.7%. This indicated that the research method had higher accuracy in processing key image information and higher efficiency. This research method can provide certain technical support for image recognition and feature extraction.
在信息时代,图像处理的有效性决定了大量图像分析任务的质量。提出了一种基于融合算法的处理技术来处理关键图像信息。引入了一个特征字典作为匹配模板模型和标准模型。利用图像分割思想对卷积层采样特征块进行优化。采用最小二乘法获得待分割图像的最优阈值。在二维线性图中对特征提取层进行结构补充并在多个尺度上进行表达。在方法训练损失测试中,该研究方法在低对比度图像训练时,经过32次迭代后损失值降至接近0。在测试图像关键信息的处理时间时,当图像包含6个特征时,该研究方法的处理时间为183毫秒。在进行比例变化测试时,该研究方法在比例为1.0时达到最高图像处理精度,为95.7%。这表明该研究方法在处理关键图像信息方面具有更高的准确性和更高的效率。该研究方法可为图像识别和特征提取提供一定的技术支持。