SIAM Journal on Imaging Sciences
短名 | SIAM J. Imaging Sci. |
Journal Impact | 2.24 |
国际分区 | MATHEMATICS, APPLIED(Q1) |
期刊索引 | SCI Q1中科院 3 区 |
ISSN | 1936-4954 |
h-index | 82 |
国内分区 | 数学(3区)数学成像科学与照相技术(3区)数学应用数学(3区)数学计算机人工智能(4区)数学计算机软件工程(4区) |
SIAM 影像科学杂志 (SIIMS) 涵盖影像科学的所有领域,并进行了广泛的解读。它包括图像形成、图像处理、图像分析、图像解释和理解、与成像相关的机器学习以及成像中的逆问题;导致应用到科学、医学、工程和其他领域的不同领域。该期刊的范围足够广泛,包括现在按照图像处理、图像分析、计算机图形学、计算机视觉、视觉机器学习和可视化等术语组织的领域。预计在 SIIMS 上发表的手稿中会出现数学和/或计算级别的正式方法以及最先进的实际结果。 SIIMS 以数学和计算为基础,并提供了一个独特的论坛来突出成像科学不同应用领域中方法、模型和算法的共性。 SIIMS 为成像科学的基础成果提供了广泛的权威来源,具有数学和应用的独特组合。SIIMS 涵盖广泛的领域,包括但不限于图像形成、图像处理、图像分析、计算机图形学、计算机视觉、可视化、图像理解、模式分析、机器智能、遥感、地球科学、信号处理、医学和生物医学成像以及地震成像。 SIIMS 涵盖的解决成像问题的基本数学理论包括但不限于谐波分析、偏微分方程、微分几何、数值分析、信息论、学习、优化、统计和概率。特别欢迎在基础知识和应用方面都有创新的研究论文。 SIIMS 专注于应用于成像科学各个方面的概念上的新思想、方法和基础。
期刊主页投稿网址涉及主题 | 数学计算机科学人工智能物理计算机视觉算法数学分析量子力学几何学图像(数学)工程类数学优化光学统计哲学应用数学心理学语言学纯数学生物 |
出版信息 | 出版商: Society for Industrial and Applied Mathematics Publications,出版周期: Quarterly,期刊类型: journal |
基本数据 | 创刊年份: 2008,原创研究文献占比: 100.00%,自引率:14.30%, Gold OA占比: 1.97% |
平均审稿周期 | 网友分享经验:>12周,或约稿 |
平均录用比例 | 网友分享经验:较易 |
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