Department of Surgery, Hamad Medical Corporation, Doha, Qatar.
School of Computer Science and Electronic Engineering, University of Essex, Colchester, UK.
Int J Comput Assist Radiol Surg. 2019 Dec;14(12):2165-2176. doi: 10.1007/s11548-019-02030-z. Epub 2019 Jul 15.
Surgical procedures such as laparoscopic and robotic surgeries are popular since they are invasive in nature and use miniaturized surgical instruments for small incisions. Tracking of the instruments (graspers, needle drivers) and field of view from the stereoscopic camera during surgery could further help the surgeons to remain focussed and reduce the probability of committing any mistakes. Tracking is usually preferred in computerized video surveillance, traffic monitoring, military surveillance system, and vehicle navigation. Despite the numerous efforts over the last few years, object tracking still remains an open research problem, mainly due to motion blur, image noise, lack of image texture, and occlusion. Most of the existing object tracking methods are time-consuming and less accurate when the input video contains high volume of information and more number of instruments.
This paper presents a variational framework to track the motion of moving objects in surgery videos. The key contributions are as follows: (1) A denoising method using stochastic resonance in maximal overlap discrete wavelet transform is proposed and (2) a robust energy functional based on Bhattacharyya coefficient to match the target region in the first frame of the input sequence with the subsequent frames using a similarity metric is developed. A modified affine transformation-based registration is used to estimate the motion of the features following an active contour-based segmentation method to converge the contour resulted from the registration process.
The proposed method has been implemented on publicly available databases; the results are found satisfactory. Overlap index (OI) is used to evaluate the tracking performance, and the maximum OI is found to be 76% and 88% on private data and public data sequences.
腹腔镜和机器人手术等外科手术因其具有微创性且使用小型化手术器械进行小切口而受到欢迎。在手术过程中,对器械(抓握器、针持器)和立体摄像机的视野进行跟踪,可以进一步帮助外科医生集中注意力,并降低犯错的可能性。跟踪在计算机视频监控、交通监控、军事监控系统和车辆导航中都很受欢迎。尽管近年来进行了大量研究,但由于运动模糊、图像噪声、缺乏图像纹理和遮挡等问题,物体跟踪仍然是一个开放性的研究问题。大多数现有的物体跟踪方法在输入视频包含大量信息和更多数量的器械时,既耗时又不够准确。
本文提出了一种用于跟踪手术视频中运动物体的变分框架。主要贡献如下:(1)提出了一种使用最大重叠离散小波变换中的随机共振的去噪方法;(2)开发了一种基于 Bhattacharyya 系数的鲁棒能量函数,使用相似性度量将输入序列中第一帧的目标区域与后续帧进行匹配。使用基于仿射变换的注册方法对特征进行运动估计,随后采用基于主动轮廓的分割方法对注册过程得到的轮廓进行收敛。
该方法已在公开可用的数据库上实现,结果令人满意。使用重叠指数(OI)来评估跟踪性能,在私有数据和公共数据序列上,最大 OI 分别为 76%和 88%。