无线视频传感器网络中基于压缩感知的多视点视频编解码器

V. Angayarkanni, S. Radha, V. Akshaya
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引用次数: 2

摘要

在监控应用中,多视图视频传感器节点需要捕获不同的视图,以便清晰地理解场景。这些多视点序列具有大量冗余数据,影响了无线视频传感器节点的存储、传输、带宽和寿命。为了解决这些问题和处理多视图传感器数据,需要一种低复杂度的编码技术。为此,本文提出了一种基于帧逼近技术(CMVC-FAT)的基于cs的多视点视频编解码框架。为了实现高效的视频压缩,采用了基于跳帧的熵量化编码。为了更好地预测接收端跳帧,提出了一种帧逼近技术(FAT)算法。仿真结果表明,CMVC-FAT框架优于现有方法,可实现86.5%的时间和比特减少。与原始帧相比,传输能量降低了83.75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-view video codec using compressive sensing for wireless video sensor networks
In monitoring applications, different views are needed to be captured by multi-view video sensor nodes for understanding the scene clearly. These multi-view sequences have large volume of redundant data which affects the storage, transmission, bandwidth and lifetime of wireless video sensor nodes. A low complex coding technique is required for addressing these issues and for processing multi-view sensor data. Hence, in this paper, a framework on CS-based multi-view video codec using frame approximation technique (CMVC-FAT) is proposed. Quantisation with entropy coding based on frame skipping is adopted for achieving efficient video compression. For better prediction of skipped frame at receiver, a frame approximation technique (FAT) algorithm is proposed. Simulation results reveal that CMVC-FAT framework outperforms the existing method with achievement of 86.5% reduction in time and bits. Also, it shows 83.75% reduction in transmission energy compared with raw frame.
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