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Convolutional Recurrent Neural Network for Bubble Detection in a Portable Continuous Bladder Irrigation Monitor

机译:卷积递归神经网络用于便携式连续膀胱灌溉监控器中气泡的检测

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Continuous bladder irrigation (CBI) is commonly used to prevent urinary problems after prostate or bladder surgery. Nowadays, the irrigation flow rate is regulated manually based on the color (qualitative estimation of the blood concentration) of the drainage fluid. To monitor the blood concentration quantitatively and continuously, we have developed a portable CBI monitor based on the Lambert-Beer law. It measures transmitted light intensity via a camera sensor and deduces the blood concentration. To achieve high reliability, we need to guarantee that the measurement is conducted when there is no air bubble passing through the view of the camera. To detect bubble occurrences, we propose a convolutional recurrent neural network with a sequence of images as input: the convolutional layers extract spatial features from 2D images; the recurrent layers capture temporal features in the image sequence. Our experimental results show that our network has smaller scale and higher accuracy compared with conventional convolutional and recurrent neural networks.
机译:连续膀胱冲洗(CBI)通常用于预防前列腺或膀胱手术后的泌尿问题。如今,灌溉流量是根据排水液的颜色(血液浓度的定性估计)手动调节的。为了定量和连续地监测血液浓度,我们根据兰伯特比尔定律开发了便携式CBI监测器。它通过摄像头传感器测量透射的光强度,并推断出血液浓度。为了获得高可靠性,我们需要保证在没有气泡通过相机视野时进行测量。为了检测气泡的出现,我们提出了一个卷积递归神经网络,将一系列图像作为输入:卷积层从2D图像中提取空间特征;循环层捕获图像序列中的时间特征。我们的实验结果表明,与传统的卷积神经网络和递归神经网络相比,我们的网络规模较小,准确性更高。

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