基于Kinect传感器的实时深度洞填充和立体图像的深度提取

Kapil S. Raviya, V. Dwivedi, A. Kothari, Gunvantsinh Gohil
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引用次数: 2

摘要

研究人员提出了基于频域填洞的实时深度。传感器生成的深度序列质量更好。该方法能够产生高特征深度的视频,这对于提高Microsoft Kinect的各种应用性能非常有用,例如障碍物检测和避免,面部跟踪,手势识别,姿势估计和骨骼。对于立体匹配方法,图像深度提取是混合(结合形态学运算)数学算法。其中包括颜色转换、分块匹配、引导滤波、最小视差分配设计、数学周长、零深度分配、补孔与形态算子置换组合、最后的非线性空间滤波等步骤。该算法可生成平滑、可靠、低噪、高效的深度图。结构相似指数图(SSIM)、峰值信噪比(PSNR)和均方误差(MSE)等评价参数衡量比例分析的结果。
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Real Time Depth Hole Filling using Kinect Sensor and Depth Extract from Stereo Images
The researcher have suggested real time depth based on frequency domain hole filling. It get better quality of depth sequence generated by sensor. This method is capable to produce high feature depth video which can be quite useful in improving the performance of various applications of Microsoft Kinect such as obstacle detection and avoidance, facial tracking, gesture recognition, pose estimation and skeletal. For stereo matching approach images depth extraction is the hybrid (Combination of Morphological Operation) mathematical algorithm. There are few step like color conversion, block matching, guided filtering, minimum disparity assignment design, mathematical perimeter, zero depth assignment, combination of hole filling and permutation of morphological operator and last nonlinear spatial filtering. Our algorithm is produce smooth, reliable, noise less and efficient depth map. The evaluation parameter such as Structure Similarity Index Map (SSIM), Peak Signal to Noise Ratio (PSNR) and Mean Square Error (MSE) measure the results for proportional analysis.
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