학술논문

Variable Window for Outlier Detection and Impulsive Noise Recognition in Range Images
Document Type
Conference
Source
2014 14th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing Cluster, Cloud and Grid Computing (CCGrid), 2014 14th IEEE/ACM International Symposium on. :857-864 May, 2014
Subject
Computing and Processing
General Topics for Engineers
Noise
Noise reduction
Image denoising
Algorithm design and analysis
Indexes
Educational institutions
Wavelet transforms
Variable window
Range image denoising
Outlier detection
Impulsive noise recognition
Index Distance Weighted Mean filter
Language
Abstract
To improve comprehensive performance of denoising range images, an impulsive noise (IN) denoising method with variable windows is proposed in this paper. Founded on several discriminant criteria, the principles of dropout IN detection and outlier IN detection are provided. Subsequently, a nearest non-IN neighbors searching process and an Index Distance Weighted Mean filter is combined for IN denoising. As key factors of adapatablity of the proposed denoising method, the sizes of two windows for outlier INs detection and INs denoising are investigated. Originated from a theoretical model of invader occlusion, variable window is presented for adapting window size to dynamic environment of each point, accompanying with practical criteria of adaptive variable window size determination. Experiments on real range images of multi-line surface are proceeded with evaluations in terms of computational complexity and quality assessment with comparison analysis among a few other popular methods. It is indicated that the proposed method can detect the impulsive noises with high accuracy, meanwhile, denoise them with strong adaptability with the help of variable window.