Enhanced Video Streaming Based Computing Encoder for Digital Visual Processing

T. Kumar, Amita Shukla
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Abstract

The rise of video streaming for digital visual processing has been a boon for the industry of visual processing. Video streaming technology has made it easier for companies to capture, analyze, and interpret visual data faster than ever before. It has allowed for the storage and transmission of large amounts of visual data at high speeds, providing businesses with the ability to process and interpret this data in real-time. Video streaming technology can be used in a wide variety of applications, including facial recognition, 3D mapping, and object recognition. By streaming video data, companies can quickly and accurately identify individuals, recognize objects, and track movement. This technology can also be used in security applications, such as surveillance and monitoring, as well as in medical imaging, such as MRI and CT scans. Video streaming technology has also allowed companies to create more efficient visual processing systems. The streaming video data can be used to automate the process of image recognition and object classification. This has allowed companies to reduce the amount of time and effort needed to interpret visual data. Additionally, streaming video data can be used to create virtual reality experiences, providing users with an immersive experience when viewing digital images.
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基于增强型视频流的数字视觉处理计算编码器
用于数字视觉处理的视频流的兴起对视觉处理行业来说是一个福音。视频流技术使公司比以往任何时候都更容易捕获、分析和解释视觉数据。它允许以高速存储和传输大量视觉数据,为企业提供实时处理和解释这些数据的能力。视频流技术可用于各种各样的应用,包括面部识别、3D映射和物体识别。通过流媒体视频数据,公司可以快速准确地识别个人、识别物体并跟踪运动。该技术还可用于安全应用,如监视和监控,以及医学成像,如MRI和CT扫描。视频流技术还允许公司创建更高效的视觉处理系统。流媒体视频数据可以用于图像识别和目标分类的自动化过程。这使得公司可以减少解释可视化数据所需的时间和精力。此外,流媒体视频数据可用于创建虚拟现实体验,为用户在观看数字图像时提供身临其境的体验。
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