GAN-Based Super Resolution for Accurate 3D Surface Reconstruction from Light Field Skin Images Towards Haptic Palpation

Myeongseob Ko, Donghyun Kim, Kwangtaek Kim
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Abstract

The development of vision technology for observation of skin surface and diagnosis of skin disease for preventing secondary infections caused by direct skin touch has consistently been in the medical field spotlight. Many studies have been conducted to acquire three dimensional (3D) data through stereo images, multiple images, and lasers because (3D) data of in-vivo skin image is essential for accurate medical diagnosis. However, stereo vision systems or 3D laser systems for obtaining 3D information require high cost and have high computational complexity, and hence they have not been used universally. Additionally, the use of such systems is still not preferred in the medical field due to limitations on visual decision making. Therefore, a haptic diagnosis system that can blend vision information from a camera and palpation information from a dermatologist has been considered. In this study, we propose a 3D skin surface reconstruction method using a light field camera for haptic rendering and palpation. To achieve this goal, we addressed the low resolution problem, which has been consistently present in light field cameras, through the generative adversarial nets (GANs)-based super resolution method, and exploited the light field system which has been applied only to the object scene for obtaining 3D skin surface texture. Experimental results show that the method proposed in this study is promising and offers sufficient potential for haptic diagnosis.
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基于gan的从光场皮肤图像到触觉触诊的精确3D表面重建的超分辨率
利用视觉技术对皮肤表面进行观察和诊断,预防皮肤直接接触引起的继发感染,一直是医学界关注的焦点。由于活体皮肤图像的三维数据对于准确的医学诊断至关重要,因此许多研究通过立体图像、多图像和激光获取三维数据。然而,用于获取三维信息的立体视觉系统或三维激光系统成本高、计算复杂度高,尚未得到普遍应用。此外,由于视觉决策的限制,在医疗领域使用这种系统仍然不是首选。因此,我们考虑了一种融合了相机视觉信息和皮肤科医生触诊信息的触觉诊断系统。在这项研究中,我们提出了一种使用光场相机进行触觉渲染和触诊的3D皮肤表面重建方法。为了实现这一目标,我们通过基于生成对抗网络(GANs)的超分辨率方法解决了光场相机一直存在的低分辨率问题,并利用仅应用于物体场景的光场系统来获取3D皮肤表面纹理。实验结果表明,该方法在触觉诊断中具有广阔的应用前景。
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