What are different kinds of applications of multimedia data mining?

 APPLICATIONS OF MULTIMEDIA MINING

 There are different kinds of applications  of multimedia data mining, some of which are as follows:

Digital Library: The collection of digital data is stored and maintained in a digital library, which is essential to convert different formats of digital data into text, images, video, audio, etc.

Traffic Video Sequences: In order to determine important but previously unidentified knowledge from the traffic video sequences, detailed analysis, and mining are to be performed based on vehicle identification, traffic flow, and queue temporal relations of the vehicle at an intersection. This provides an economic approach for regular traffic monitoring processes.

Medical Analysis: Multimedia mining is primarily used in the medical field and particularly for analyzing medical images. Various data mining techniques are used for image classification. For example, Automatic 3D delineation of highly aggressive brain tumors, Automatic localization, and identification of vertebrae in 3D CT scan MRI Scans, ECG, and X-Ray.

Customer Perception: It contains details about customers' opinions, products or services, customers complaints, customers preferences, and the level of customer satisfaction of products or services which are collected together. Many companies have call centers that receive telephone calls from customers. The audio data serve as topic detection, resource assignment, and evaluation of the quality of services.

Media Making and Broadcasting: Radio stations and TV channels create broadcasting companies and multimedia mining can be applied to monitor their content to search for more efficient approaches and improve their quality.

Surveillance system: It consists of collecting, analyzing, summarizing audio, video, or audio visual information about specific areas like government organizations, multi-national companies, shopping malls, banks, forests, agricultural areas, and highways, etc. The main use of this technology in the field of security hence it can be utilized by military, police, and private companies since they provide security services. 

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