Gan Hong-Seng, Swee Tan Tian, Abdul Karim Ahmad Helmy, Sayuti Khairil Amir, Abdul Kadir Mohammed Rafiq, Tham Weng-Kit, Wong Liang-Xuan, Chaudhary Kashif T, Ali Jalil, Yupapin Preecha P
Department of Biotechnology and Medical Engineering, Faculty of Biosciences and Medical Engineering, Universiti Teknologi Malaysia, 81310 Skudai, Johor, Malaysia.
Department of Biotechnology and Medical Engineering, Medical Device and Technology Group, Material and Manufacturing Research Alliance, Faculty of Biosciences and Medical Engineering, Universiti Teknologi Malaysia, 81310 Skudai, Johor, Malaysia.
ScientificWorldJournal. 2014;2014:294104. doi: 10.1155/2014/294104. Epub 2014 May 20.
Well-defined image can assist user to identify region of interest during segmentation. However, complex medical image is usually characterized by poor tissue contrast and low background luminance. The contrast improvement can lift image visual quality, but the fundamental contrast enhancement methods often overlook the sudden jump problem. In this work, the proposed bihistogram Bezier curve contrast enhancement introduces the concept of "adequate contrast enhancement" to overcome sudden jump problem in knee magnetic resonance image. Since every image produces its own intensity distribution, the adequate contrast enhancement checks on the image's maximum intensity distortion and uses intensity discrepancy reduction to generate Bezier transform curve. The proposed method improves tissue contrast and preserves pertinent knee features without compromising natural image appearance. Besides, statistical results from Fisher's Least Significant Difference test and the Duncan test have consistently indicated that the proposed method outperforms fundamental contrast enhancement methods to exalt image visual quality. As the study is limited to relatively small image database, future works will include a larger dataset with osteoarthritic images to assess the clinical effectiveness of the proposed method to facilitate the image inspection.
清晰的图像有助于用户在分割过程中识别感兴趣区域。然而,复杂的医学图像通常具有组织对比度差和背景亮度低的特点。对比度的提高可以提升图像视觉质量,但基本的对比度增强方法往往忽略了突然跳跃问题。在这项工作中,提出的双直方图贝塞尔曲线对比度增强引入了“适当对比度增强”的概念,以克服膝关节磁共振图像中的突然跳跃问题。由于每个图像都有其自身的强度分布,适当对比度增强会检查图像的最大强度失真,并使用强度差异减小来生成贝塞尔变换曲线。所提出的方法提高了组织对比度,并保留了相关的膝关节特征,同时不影响自然图像外观。此外,Fisher最小显著差异检验和Duncan检验的统计结果一致表明,所提出的方法在提升图像视觉质量方面优于基本对比度增强方法。由于该研究仅限于相对较小的图像数据库,未来的工作将包括一个更大的骨关节炎图像数据集,以评估所提出方法的临床有效性,以便于图像检查。