Claim Missing Document
Check
Articles

Found 2 Documents
Search
Journal : Journal of Computer Networks, Architecture and High Performance Computing

Gradient Magnitude Based Image Classification and Edge Detection for Pattern Recognition in Grayscale Images Simangunsong, Pandi Barita Nauli; Andriani, Tuti; Sirait, Matias Julyus Fika
Journal of Computer Networks, Architecture and High Performance Computing Vol. 6 No. 4 (2024): Articles Research October 2024
Publisher : Information Technology and Science (ITScience)

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.47709/cnahpc.v6i4.4611

Abstract

Image classification is a crucial technique in digital image processing, used in various applications such as object recognition, surveillance systems, and medical image analysis. This research explores the use of gradient magnitude-based edge detection and Robert's Cross methods in improving the classification accuracy of grayscale images. Edge detection is used to identify object boundaries, while gradient magnitude amplifies intensity differences, thus clarifying existing patterns. Through experiments conducted on grayscale images, the results show that this method is able to detect edges with significant accuracy. The gradient values obtained from the combination of Rx and Ry matrices give a strong indication of the presence of edges, which plays an important role in image classification. With an accuracy of 75%, the method proved to be effective, although there are still challenges in dealing with images with high noise or low contrast. The conclusion of this study shows that the combination of edge detection and gradient magnitude is a promising approach for image classification, providing results that can be applied in various domains, including medical and surveillance. Further research is recommended to optimize this approach and extend its application to more complex datasets.
Gradient Magnitude Based Image Classification and Edge Detection for Pattern Recognition in Grayscale Images Simangunsong, Pandi Barita Nauli; Andriani, Tuti; Sirait, Matias Julyus Fika
Journal of Computer Networks, Architecture and High Performance Computing Vol. 6 No. 4 (2024): Articles Research October 2024
Publisher : Information Technology and Science (ITScience)

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.47709/cnahpc.v6i4.4611

Abstract

Image classification is a crucial technique in digital image processing, used in various applications such as object recognition, surveillance systems, and medical image analysis. This research explores the use of gradient magnitude-based edge detection and Robert's Cross methods in improving the classification accuracy of grayscale images. Edge detection is used to identify object boundaries, while gradient magnitude amplifies intensity differences, thus clarifying existing patterns. Through experiments conducted on grayscale images, the results show that this method is able to detect edges with significant accuracy. The gradient values obtained from the combination of Rx and Ry matrices give a strong indication of the presence of edges, which plays an important role in image classification. With an accuracy of 75%, the method proved to be effective, although there are still challenges in dealing with images with high noise or low contrast. The conclusion of this study shows that the combination of edge detection and gradient magnitude is a promising approach for image classification, providing results that can be applied in various domains, including medical and surveillance. Further research is recommended to optimize this approach and extend its application to more complex datasets.
Co-Authors Abd Samad, Abd Abdul Ghoni Adelin, Muhammad Aflizah, Nur Afriza Afriza Afriza, Afriza AHMAD ANSORI ARDIANSYAH ARDIANSYAH Ardiansyah, Adriansyah Atlis, Linda Dea Attoillah, Muhammad Farhan Bangun, Gladis Salsabilla Barus, Apriwati bin Jamaludin, Muhammad Arif Sufyan Cahyono, Imam Dalillah, Aupi Damsir, Damsir Darmeli Nasution Dinata, Yuriyan Faujiah, Syifa Febrian, Vicky Rizki Gita Morinda, Claudio Hafis, Gustianto Nur Hestivik, Chelsi Husni Thamrin Ilham Wahyudi Ilham, Rahmat Intan Sari, Arrum Iriani, Umi Jumrotun, Siti Khairul Lukman Hakim Lyadi, Muslim M. FAISAL AKBAR Matias Julyus Fika Sirait Mentari, Risca Sri Morinda, Claudio Gita Mufid, Dyonel Ilham Muhammad Amin Muhammad Iqbal Muhammad Iqbal Muhammad Syaifuddin Muhammad Syaifuddin Muhammad Syaifudin Muslim Afandi Muti’ah, Siti Nainggolan, Irfan Nini Aryani Nur Azizah Nuraini Nuraini Nurhafizah Nurhafizah Nurlina Nurlina PURNAMA, ADE Putra, Alif Yunanda Putra, Rezi Muda Putra, Suntama Putri, Salsabillah Ramadhan, Muhammad Aryo Rizka Damayanti salam, Indra Agus Salim, Muhammad Samsul Arifin Santika, Mira Saputri, Eki Nining Septiani, Iga Shihabuddin, Ahmad Simangunsong, Pandi Barita Nauli Sitorus, Syahrial Situkkir, Meiarni SRI RAHAYU Sukaiman Sukma, Arif Bahtera Syafiuddin, Fauzan Azima Syafuddin, Muhammad Syahril Syarif Tarigan, Sry Wahyana Br Tasbih, M. Irfan Umar Faruq Yanti, Annisa Darma Yudistira, Srikandi Yulaekah, Yulaekah Yuniati Yuniati Zein, M. Rasyad Zuhairansyah Arifin Zuhairansyah, Zuhairansyah