Hybrid Parallel Image Processing Algorithm for Binary Images with Image Thinning Technique

Image thinning is the most essential pre-processing technique that plays major role in image processing applications such as image analysis and pattern recognition. It is a process that reduces a thick binary image into thin skeleton. In the present paper we have used hybrid parallel thinning algorithm to obtain the skeleton of the binary image. The result skeleton contains one pixel width which preserves the topological properties and retains the connectivity.

[1]  Robert C. Spicer,et al.  Author's biography , 1993 .

[2]  Sergey Bereg,et al.  A new algorithmic framework for basic problems on binary images , 2017, Discret. Appl. Math..

[3]  Ranganathan G,et al.  A Study to Find Facts Behind Preprocessing on Deep Learning Algorithms , 2021, Journal of Innovative Image Processing.

[4]  J. Chen,et al.  Analysis of the Impact of Mechanical Deformation on Strawberries Harvested from the Farm , 2020 .

[5]  Anuradha Khattar,et al.  Deep Domain Adaptation Approach for Classification of Disaster Images , 2021 .

[6]  Neeraj Sharma,et al.  Parallel Image Processing Techniques, Benefits and Limitations , 2016 .

[7]  Edriss E. B. Adam,et al.  Survey on Medical Imaging of Electrical Impedance Tomography (EIT) by Variable Current Pattern Methods , 2021, June 2021.

[8]  Hadish Habte Tesfamikael,et al.  Simulation of Eye Tracking Control based Electric Wheelchair Construction by Image Segmentation Algorithm , 2021 .

[9]  Amit Kumar Goel,et al.  Intrusion Detection: Spider Content Analysis to Identify Image-Based Bogus URL Navigation , 2021 .

[10]  Tauseef Ahmad,et al.  Detection of continuous and thin edges of noisy images by new kernel approach , 2018, 2018 IEEE 9th Annual Information Technology, Electronics and Mobile Communication Conference (IEMCON).

[11]  Punam K. Saha,et al.  Fuzzy Object Skeletonization: Theory, Algorithms, and Applications , 2018, IEEE Transactions on Visualization and Computer Graphics.

[12]  N. Rakesh,et al.  Image Classification Using Machine Learning Techniques for Traffic Signal , 2021 .

[13]  Abdelkamel Tari,et al.  A new thinning algorithm for binary images , 2015, 2015 3rd International Conference on Control, Engineering & Information Technology (CEIT).

[14]  Dhaya R,et al.  Analysis of Adaptive Image Retrieval by Transition Kalman Filter Approach based on Intensity Parameter , 2021 .

[15]  U. Palani,et al.  Enhancement of Medical Image Fusion Using Image Processing , 2020 .

[16]  K. M. Sahila,et al.  Secure Digital Image Watermarking by Using SVD and AES , 2021 .

[17]  Bilal Bataineh An Iterative Thinning Algorithm for Binary Images Based on Sequential and Parallel Approaches , 2018 .

[18]  S. Dutta,et al.  Highly Precise Modified Blue Whale Method Framed by Blending Bat and Local Search Algorithm for the Optimality of Image Fusion Algorithm , 2020 .

[19]  Akey Sungheetha,et al.  3D Image Processing using Machine Learning based Input Processing for Man-Machine Interaction , 2021 .

[20]  Fan Jing Robust parallel thinning algorithm for binary images , 2006 .

[21]  R. Dhaya Flawless Identification of Fusarium Oxysporum in Tomato Plant Leaves by Machine Learning Algorithm , 2021 .

[22]  S. B. Pokle,et al.  New Iterative Algorithms for Thinning Binary Images , 2010, 2010 3rd International Conference on Emerging Trends in Engineering and Technology.

[23]  Joel Eliza Jacob,et al.  Video Enhancement and Low-Resolution Facial Image Reconstruction for Crime Investigation , 2021 .

[24]  Samuel Manoharan J,et al.  A Novel User Layer Cloud Security Model based on Chaotic Arnold Transformation using Fingerprint Biometric Traits , 2021 .

[25]  Neeraj Sharma,et al.  Study of Parallel Image Processing with the Implementation of vHGW Algorithm using CUDA on NVIDIA ’ S GPU Framework , 2017 .