小型便携式超声机器人的自动诊断:基于稳态卡尔曼滤波的内脏状态估计

Yudai Sasaki, Fumio Eura, Kento Kobayashi, Ryosuke Kondo, Kyohei Tomita, Yu Nishiyama, H. Tsukihara, Naoki Matsumoto, N. Koizumi
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引用次数: 1

摘要

近年来,人们对人工智能、机器人技术的发展以及对超声诊断中正确图像采集的支持等方面的研究非常活跃。使用机器人技术的一个传统问题是,机器人本身是大型和复杂的机构。如果一个机器人很大,那么它的使用范围是有限制的;也就是说,一定的空间是必要的。考虑到这些限制,在本研究中,我们开发了一种紧凑型医疗机器人,手持超声探头,可以轻松地进行家庭诊断,以补偿器官运动。当机器人自动诊断器官时,需要用超声探头在同一横截面上扫描器官,并始终与器官的中心对齐。在目前研究的基础上,为了补偿超声探头在超声图像中的运动,对超声图像中的运动进行了分析。该方法将具有线性高斯噪声的卡尔曼滤波模型应用于模板匹配得到的位置观测值,并在目标状态估计中估计系统噪声和观测噪声。利用Riccati方程的解构造了一个渐近稳定的稳态Kalman滤波器。在前期研究数据集上对模型进行了验证实验,并对模型的位置和速度进行了分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Diagnosis by Compact Portable Ultrasound Robot: State Estimation of Internal Organs with Steady-State Kalman Filter
In recent years, research has been very active on the development of artificial intelligence, robot technology, and support for proper image acquisition in ultrasound diagnosis. A conventional problem using robot technology is that robots themselves are large and complicated mechanisms. If a robot is large, there is a restriction where it can be used; that is, a certain amount of space is necessary. In consideration of these constraints, in this research, we developed a compact medical robot holding an ultrasound probe that can easily perform at-home diagnosis that compensates for organ movement. When the robot automatically diagnoses organs, it is necessary to scan organs with the ultrasound probe over the same cross-section always aligned with the center of the organ. Based on the present research, in order to compensate for the movement of the phantom with movement of the ultrasound probe in the ultrasound images, the movement of the phantom in the ultrasound images is analyzed. As a method, Kalman filter model with linear Gaussian noise is applied to position observations obtained by template matching, and system noise and observation noise are estimated in object state estimation. We also constructed a steady-state Kalman filter with asymptotic stability using solutions from the Riccati equation. Furthermore, verification experiments were carried out with the model on dataset acquired in previous research, and the position and velocity of the phantom were analyzed.
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