Deep intra-operative illumination calibration of hyperspectral cameras

Alexander Baumann, Leonardo Ayala, Alexander Studier-Fischer, Jan Sellner, Berkin Özdemir, Karl-Friedrich Kowalewski, Slobodan Ilic, Silvia Seidlitz, Lena Maier-Hein
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Abstract

Hyperspectral imaging (HSI) is emerging as a promising novel imaging modality with various potential surgical applications. Currently available cameras, however, suffer from poor integration into the clinical workflow because they require the lights to be switched off, or the camera to be manually recalibrated as soon as lighting conditions change. Given this critical bottleneck, the contribution of this paper is threefold: (1) We demonstrate that dynamically changing lighting conditions in the operating room dramatically affect the performance of HSI applications, namely physiological parameter estimation, and surgical scene segmentation. (2) We propose a novel learning-based approach to automatically recalibrating hyperspectral images during surgery and show that it is sufficiently accurate to replace the tedious process of white reference-based recalibration. (3) Based on a total of 742 HSI cubes from a phantom, porcine models, and rats we show that our recalibration method not only outperforms previously proposed methods, but also generalizes across species, lighting conditions, and image processing tasks. Due to its simple workflow integration as well as high accuracy, speed, and generalization capabilities, our method could evolve as a central component in clinical surgical HSI.
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高光谱相机的深度术中照明校准
高光谱成像(HSI)正在成为一种前景广阔的新型成像模式,具有各种潜在的外科应用前景。然而,目前可用的照相机与临床工作流程的整合性较差,因为它们需要关闭照明,或者一旦照明条件发生变化,就需要手动重新校准照相机。鉴于这一关键瓶颈,本文有三方面的贡献:(1) 我们证明了手术室中动态变化的照明条件极大地影响了 HSI 应用的性能,即生理参数估计和手术场景分割。(2) 我们提出了一种基于学习的新方法,用于在手术过程中自动重新校准高光谱图像,并证明该方法具有足够的准确性,可以取代繁琐的基于白色参照物的重新校准过程。(3) 基于来自人体模型、猪模型和大鼠的总共 742 个高光谱立方体,我们证明了我们的重新校准方法不仅优于之前提出的方法,而且还具有跨物种、照明条件和图像处理任务的通用性。由于其简单的工作流程集成以及高精确度、高速度和通用能力,我们的方法可以发展成为临床手术人脸成像的核心组件。
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