Quadruplet loss and SqueezeNets for Covid-19 detection from Chest-X ray

Pranshav Gajjar, Naishadh Mehta, Pooja Shah
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引用次数: 1

Abstract

The Coronavirus Pandemic triggered by SARS-CoV-2 has wreaked havoc on the planet and is expanding exponentially. While scanning methods, including CT scans and chest X-rays, are commonly used, artificial intelligence implementations are also deployed for COVID-based pneumonia detection. Due to image biases in X-ray data, bilateral filtration and Histogram Equalization are used followed by lung segmentation by a U-Net, which successfully segmented 83.2\% of the collected dataset. The segmented lungs are fed into a Quadruplet Network with SqueezeNet encoders for increased computational efficiency and high-level embeddings generation. The embeddings are computed using a Multi-Layer Perceptron and visualized by T-SNE (T-Distributed Stochastic Neighbor Embedding) scatterplots. The proposed research results in a 94.6\% classifying accuracy which is 2\% more than the baseline Convolutional Neural Network and a 90.2\% decrease in prediction time.
胸部x线检测Covid-19的四联体丢失和挤压检测
由SARS-CoV-2引发的冠状病毒大流行给地球造成了严重破坏,并呈指数级增长。虽然通常使用CT扫描和胸部x光等扫描方法,但人工智能也被用于基于covid - 19的肺炎检测。由于x射线数据存在图像偏差,首先采用双侧过滤和直方图均衡化,然后采用U-Net进行肺分割,成功分割了83.2%的数据集。通过SqueezeNet编码器将分割的肺输入到四重网络中,以提高计算效率和高级嵌入生成。嵌入使用多层感知器计算,并通过T-SNE (t分布随机邻居嵌入)散点图可视化。该方法的分类准确率为94.6%,比基线卷积神经网络提高了2%,预测时间缩短了90.2%。
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