Finding the Best Performing Pre-Trained CNN Model for Image Classification: Using a Class Activation Map to Spot Abnormal Parts in Diabetic Retinopathy Image

Jihyung Kim
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引用次数: 1

Abstract

Diabetic retinopathy (DR) is a common eye disease that people get from diabetes. About 33.7% of the people with diabetes have DR. With our datas, which are pictures of the eyeball with and without DR, we tried different convolutional neural network (CNN) models to get the best accuracy score. We tested our datas with a default CNN model, and 5 different pre-trained models: MobileNet, VGG16, VGG19, Inception V3, and Inception ResNet V2. The default CNN model didn’t perform very well, getting only 10.4%. The pre-trained model also didn’t perform as good as expected, so we decided to use GRU with the models, which increases the score. For the higher accuracy, we added bidirectional GRU to train the whole parameters in the model. The 5 different pre-trained models scored an average of 74.2% accuracy score, and Inception ResNet V2 with bidirectional GRU included scored the highest accuracy, achieving 83.57%. For additional study, we used a class activation map to spot the abnormal parts of the eyeball with DR, and we could spot abnormal veins and bleeding on the eyeball. However, our research has limitations on that we did not use the segmentation methods, which is more advanced technique compared to classification, such as U-net, Fully Convolutional Network (FCN), Deep Lab V3, and Feature Pyramid Network. Furthermore, even though our model classified 5 different classes, the fact that the highest accuracy score was lower than 90% is also a limitation. For further study, we would prepare a masking method for applying segmentation methods to our dataset.
寻找表现最好的预训练CNN图像分类模型:使用类激活图识别糖尿病视网膜病变图像中的异常部分
糖尿病视网膜病变(DR)是一种由糖尿病引起的常见眼病。大约33.7%的糖尿病患者患有DR。根据我们的数据(有DR和没有DR的眼球的图片),我们尝试了不同的卷积神经网络(CNN)模型来获得最佳的准确率分数。我们用一个默认的CNN模型和5个不同的预训练模型来测试我们的数据:MobileNet, VGG16, VGG19, Inception V3和Inception ResNet V2。默认的CNN模型表现不太好,只有10.4%。预训练的模型也没有达到预期的效果,所以我们决定对模型使用GRU,这样可以提高分数。为了获得更高的精度,我们在模型中加入了双向GRU对整个参数进行训练。5种不同的预训练模型平均准确率为74.2%,其中包含双向GRU的Inception ResNet V2准确率最高,达到83.57%。在进一步的研究中,我们使用了一个类激活图,用DR来发现眼球的异常部位,我们可以发现眼球上的异常静脉和出血。然而,我们的研究有局限性,我们没有使用比分类更先进的分割方法,如U-net、Fully Convolutional Network (FCN)、Deep Lab V3和Feature Pyramid Network。此外,尽管我们的模型分类了5个不同的类别,但最高准确率低于90%也是一个限制。为了进一步研究,我们将准备一种掩蔽方法,用于将分割方法应用于我们的数据集。
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