Coding Scheme for Compressive Sensing Depth Video Based on Adaptive Bits Allocation
WANG Kang1, LAN Xuguang1, LI Xiangwei2
1.Institute of Artificial Intelligence and Robotics, Xi′an Jiaotong University, Xi′an 710049 2.Xi′an Institute of Optics and Precision Mechanics, Chinese Academy of Sciences, Xi′an 710049
Abstract:By utilizing the compressive sensing in the depth video, the compressive sensing depth video(CSDV) is obtained. However, the redundancy of CSDV is still huge. A coding scheme for compressive sensing depth video(CSDV) based on Gaussian mixture models(GMM) and object edges is proposed. Firstly, the compressive sensing(CS) is utilized to compress 8 depth frames to acquire a CSDV frame in the temporal direction. A whole CSDV frame is divided into a set of non-overlap patches, and object edges in the patches are detected by Canny operator to reduce the computational complexity of quantization. Then, variable bits for different patches are allocated based on the percentages of non-zero pixels in every patch. The GMM is employed to model the CSDV frame patches and design product vector quantizers to quantize CSDV frames.
王康, 兰旭光, 李翔伟. 基于自适应码率分配的压缩传感深度视频编码方法[J]. 模式识别与人工智能, 2018, 31(4): 293-299.
WANG Kang, LAN Xuguang, LI Xiangwei. Coding Scheme for Compressive Sensing Depth Video Based on Adaptive Bits Allocation. , 2018, 31(4): 293-299.
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