Poerbaningtyas, E, Dradjat, R S, Endharti, A T, Sakti, S P, Widjajanto, E, Yueniwati, Y, Purnomo, M H. (1399). Optimizing Infrared Camera Resolution for Small Object Detection using Subpixel Rendering and PIFS in Multiresolution Image Analysis. سامانه مدیریت نشریات علمی, 10(3), 261-272. doi: 10.31661/jbpe.v0i0.1197
E Poerbaningtyas; R S Dradjat; A T Endharti; S P Sakti; E Widjajanto; Y Yueniwati; M H Purnomo. "Optimizing Infrared Camera Resolution for Small Object Detection using Subpixel Rendering and PIFS in Multiresolution Image Analysis". سامانه مدیریت نشریات علمی, 10, 3, 1399, 261-272. doi: 10.31661/jbpe.v0i0.1197
Poerbaningtyas, E, Dradjat, R S, Endharti, A T, Sakti, S P, Widjajanto, E, Yueniwati, Y, Purnomo, M H. (1399). 'Optimizing Infrared Camera Resolution for Small Object Detection using Subpixel Rendering and PIFS in Multiresolution Image Analysis', سامانه مدیریت نشریات علمی, 10(3), pp. 261-272. doi: 10.31661/jbpe.v0i0.1197
Poerbaningtyas, E, Dradjat, R S, Endharti, A T, Sakti, S P, Widjajanto, E, Yueniwati, Y, Purnomo, M H. Optimizing Infrared Camera Resolution for Small Object Detection using Subpixel Rendering and PIFS in Multiresolution Image Analysis. سامانه مدیریت نشریات علمی, 1399; 10(3): 261-272. doi: 10.31661/jbpe.v0i0.1197
Optimizing Infrared Camera Resolution for Small Object Detection using Subpixel Rendering and PIFS in Multiresolution Image Analysis
1MT, Doctoral Program of Medical Science, Faculty of Medicine, Brawijaya University, Malang, Indonesia
2MT, Department of Informatics, STIKI, Malang, Indonesia
3PhD, Department of Orthopaedic, Saiful Anwar Hospital, Faculty of Medicine, Brawijaya University, Malang, Indonesia
4PhD, Department of Parasitology, Faculty of Medicine, Brawijaya University, Malang, Indonesia
5PhD, Department of Physics, Brawijaya University, Malang, Indonesia
6PhD, Department of Clinical Pathology, Faculty of Medicine, Brawijaya University, Malang, Indonesia
7PhD, Department of Radiology, Faculty of Medicine, Brawijaya University, Malang, Indonesia
8PhD, Department of Electrical, Faculty of Electric, ITS, Surabaya, Indonesia
چکیده
Background: Breast cancer screening techniques have been developing rapidly in the field of imaging systems. One of these techniques is thermography, which is an alternative modality for mammography to detect breast lesions. Thermography utilization has been progressively developing as various models and methods of object processing improvement. Currently, the Fluke TIS20 infrared camera, with a resolution of 320 × 240, has not been used to measure precisely small objects such as early breast cancer lesions. Retrieval and processing of single images lead into imprecise object measurements and false positive results. Objective: Problems have been arisen due to the limitations of the camera resolution, object retrieval techniques and suboptimal image processing. The aim of this study was to detect accurately breast cancer lesions in rats, which were induced by carcinogenic compounds. Material and Methods: In this experimental study, development of models was conducted based on increasing image by optimizing the ability of low-resolution infrared (IR) cameras to identify s mall objects precisely. Image pixel density increased by adjusting the distance of the objects from the camera and multiple images of objects gradually shifting were used to measure object dimensions precisely. Results: The results showed that cancerous lesions as small as 1.27 mm could be detected. This method of lesion detection had a sensitivity and specificity of 93% and 77 % respectively. Conclusion: Small objects (cancerous lesions) were measured by increasing image resolution through splitting pixels into subpixels and combining several images using Partitioned Iterated Function Systems (PIFS).
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