首页> 外文会议>International Workshop on Machine Learning in Medical Imaging;International Conference on Medical Image Computing and Computer-Assisted Intervention >GFD Faster R-CNN: Gabor Fractal DenseNet Faster R-CNN for Automatic Detection of Esophageal Abnormalities in Endoscopic Images
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GFD Faster R-CNN: Gabor Fractal DenseNet Faster R-CNN for Automatic Detection of Esophageal Abnormalities in Endoscopic Images

机译:GFD更快的R-CNN:Gabor分形DenseNet更快的R-CNN,用于自动检测内窥镜图像中的食道异常

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Esophageal cancer is ranked as the sixth most fatal cancer type. Most esophageal cancers are believed to arise from overlooked abnormalities in the esophagus tube. The early detection of these abnormalities is considered challenging due to their different appearance and random location throughout the esophagus tube. In this paper, a novel Gabor Fractal DenseNet Faster R-CNN (GFD Faster R-CNN) is proposed which is a two-input network adapted from the Faster R-CNN to address the challenges of esophageal abnormality detection. First, a Gabor Fractal (GF) image is generated using various Gabor filter responses considering different orientations and scales, obtained from the original endoscopic image that strengthens the fractal texture information within the image. Secondly, we incorporate Densely Connected Con-volutional Network (DenseNet) as the backbone network to extract features from both original endoscopic image and the generated GF image separately; the DenseNet provides a reduction in the trained parameters while supporting the network accuracy and enables a maximum flow of information. Features extracted from the GF and endoscopic images are fused through bilinear fusion before ROI pooling stage in Faster R-CNN, providing a rich feature representation that boosts the performance of final detection. The proposed architecture was trained and tested on two different datasets independently: Kvasir (1000 images) and MICCAIT5 (100 images). Extensive experiments have been carried out to evaluate the performance of the model, with a recall of 0.927 and precision of 0.942 for Kvasir dataset, and a recall of 0.97 and precision of 0.92 for MIC-CAIT5 dataset, demonstrating a high detection performance compared to the state-of-the-art.
机译:食道癌被列为第六大致命癌症类型。据信大多数食道癌是由于食道管中被忽视的异常引起的。这些异常的早期检测被认为是具有挑战性的,因为它们在整个食管中的外观和位置随机。本文提出了一种新颖的Gabor Fractal DenseNet Faster R-CNN(GFD Faster R-CNN),它是从Faster R-CNN改编而来的两输入网络,以应对食道异常检测的挑战。首先,考虑到不同的方向和比例,使用各种Gabor滤波器响应生成Gabor分形(GF)图像,该响应是从原始内窥镜图像获得的,该图像会增强图像中的分形纹理信息。其次,我们将密集连接卷积网络(DenseNet)作为骨干网络,分别从原始内窥镜图像和生成的GF图像中提取特征。 DenseNet在支持网络准确性的同时,减少了训练有素的参数,并实现了最大的信息流。从GF和内窥镜图像中提取的特征在Faster R-CNN的ROI合并阶段之前通过双线性融合进行融合,从而提供丰富的特征表示,从而提高了最终检测的性能。所提议的体系结构分别在两个不同的数据集上进行了培训和测试:Kvasir(1000张图像)和MICCAIT5(100张图像)。进行了广泛的实验以评估模型的性能,Kvasir数据集的召回率为0.927,精确度为0.942,MIC-CAIT5数据集的召回率为0.97,精确度为0.92,与相比,具有较高的检测性能。最先进的。

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