多媒体数据挖掘中时空信息建模的机器学习范式

D. Bouchaffra, A. Amira, Ce Zhu, Chu-Song Chen
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引用次数: 0

摘要

多媒体数据挖掘与知识发现是一个新兴的跨学科应用研究领域。通过智能分析有效使用多媒体数据挖掘(MDM)具有巨大的潜力。越来越多的应用领域依赖于多媒体理解系统。多媒体理解的进步与信号处理、计算机视觉、机器学习、模式识别、多媒体数据库和智能传感器的进步直接相关。本期特刊的主要任务是确定最先进的机器学习范式,这些范式对于建模和组合时间和空间媒体线索(如音频、视觉和面部信息)以及完成多媒体数据挖掘和知识发现任务特别强大和有效。这些模型应该能够弥合需要信号处理的低级视听特征和高级语义之间的差距。在影像、人工智能等领域的特刊上发表了多篇论文;模式识别和五个贡献已经选择涵盖最先进的算法和先进的相关主题。第一个贡献是D. Xiang等人。《风云三号MERSI数据质量与干旱监测能力评价》介绍了风云三号的一些基本参数和主要技术指标,对风云三号机载中分辨率成像仪(MERSI)的数据质量与干旱监测能力进行了评价。第二个贡献来自A. belattreche等人。“用生物启发神经振荡器计算:应用于彩色图像分割”研究了神经振荡器(一种生物启发神经模型)在灰度和彩色图像分割中的计算能力和潜在应用,这是图像理解和对象识别中的一项重要任务。本文的主要贡献是能够使用神经振荡器作为解决现实世界工程问题的学习方案。A. Dargazany等人的第三篇论文题为“基于多带宽内核的目标跟踪”,探讨了使用平均移位(MS)进行目标跟踪的新方法。采用一种带宽处理MS技术,跟踪器达到密度函数的全局模式,而不需要特定的起始点。实验证明,渐进式多带宽Mean Shift跟踪算法比传统的基于核的目标跟踪(即Mean Shift)收敛速度更快。S. Alzu'bi等人的第四个贡献,题为“使用混合多分辨率统计方法的三维医学体分割”,研究了基于离散小波变换的多分辨率统计方法的新型三维体分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Paradigms for Modeling Spatial and Temporal Information in Multimedia Data Mining
Multimedia data mining and knowledge discovery is a fast emerging interdisciplinary applied research area. There is tremendous potential for effective use of multimedia data mining (MDM) through intelligent analysis. Diverse application areas are increasingly relying on multimedia understanding systems. Advances in multimedia understanding are related directly to advances in signal processing, computer vision, machine learning, pattern recognition, multimedia databases, and smart sensors. The main mission of this special issue is to identify state-of-the-art machine learning paradigms that are particularly powerful and effective for modeling and combining temporal and spatial media cues such as audio, visual, and face information and for accomplishing tasks of multimedia data mining and knowledge discovery. These models should be able to bridge the gap between low-level audiovisual features which require signal processing and high-level semantics. A number of papers have been submitted to the special issue in the areas of imaging, artificial intelligence; and pattern recognition and five contributions have been selected covering state-of-the-art algorithms and advanced related topics. The first contribution by D. Xiang et al. " Evaluation of data quality and drought monitoring capability of FY-3A MERSI data " describes some basic parameters and major technical indicators of the FY-3A, and evaluates data quality and drought monitoring capability of the Medium-Resolution Imager (MERSI) onboard the FY-3A. The second contribution by A. Belatreche et al. " Computing with biologically inspired neural oscillators: application to color image segmentation " investigates the computing capabilities and potential applications of neural oscillators, a biologically inspired neural model, to gray scale and color image segmentation, an important task in image understanding and object recognition. The major contribution of this paper is the ability to use neural oscillators as a learning scheme for solving real world engineering problems. The third paper by A. Dargazany et al. entitled " Multi-bandwidth Kernel-based object tracking " explores new methods for object tracking using the mean shift (MS). A bandwidth-handling MS technique is deployed in which the tracker reach the global mode of the density function not requiring a specific staring point. It has been proven via experiments that the Gradual Multibandwidth Mean Shift tracking algorithm can converge faster than the conventional kernel-based object tracking (known as the mean shift). The fourth contribution by S. Alzu'bi et al. entitled " 3D medical volume segmentation using hybrid multi-resolution statistical approaches " studies new 3D volume segmentation using multiresolution statistical approaches based on discrete wavelet transform and …
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