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Optimizing Infrared Camera Resolution for Small Object Detection using Subpixel Rendering and PIFS in Multiresolution Image Analysis

机译:使用子像素渲染和多分辨率图像分析中的PIFS优化红外相机分辨率进行小对象检测

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摘要

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).
机译:背景:乳腺癌筛查技术在成像系统领域已经迅速发展。这些技术之一是热成像,这是用于检测乳房病变的乳房X线摄影的替代模态。热成像利用率逐步发展为各种模型和对象处理改进的方法。目前,具有320×240的分辨率的Fluke TIS20红外相机未被用来测量精确的小物体,如早期乳腺癌病变。检索和处理单个图像导致不精确的对象测量和假阳性结果。目的:由于相机分辨率,对象检索技术和次优图像处理的局限性而出现了问题。本研究的目的是检测大鼠的准确乳腺癌病变,其被致癌化合物诱导。材料和方法:在该实验研究中,通过优化低分辨率红外(IR)摄像机的能力,基于增加图像的模型进行模型的发展。通过调节来自相机的物体的距离和逐渐移位的物体的多个图像来增加图像像素密度,用于精确地测量对象尺寸。结果:结果表明,癌变病变可以检测到1.27毫米。这种病变检测方法分别具有93%和77%的敏感性和特异性。结论:通过将像素分离到子像素中,通过将像素分离并使用分区迭代功能系统(PIF)来组合几个图像来测量小物体(癌变病变)。

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