Title of article :
A Novel Method for Medical Image Segmentation Based on Convolutional Neural Networks with SGD Optimization
Author/Authors :
Taheri, M. Department of Computer Engineering - Faculty of Engineering - Islamic Azad University - Science and Research Branch - Tehran - Iran , Rastgarpour, M. Department of Computer Engineering - Faculty of Engineering - Islamic Azad University - Saveh Branch - Saveh - Iran , Koochari, A. Department of Computer Engineering - Faculty of Engineering - Islamic Azad University - Science and Research Branch - Tehran - Iran
Abstract :
Background and Objectives: medical image Segmentation is a challenging
task due to low contrast between Region of Interest and other textures, hair
artifacts in dermoscopic medical images, illumination variations in images like
Chest-Xray and various imaging acquisition conditions.
Methods: In this paper, we have utilized a novel method based on
Convolutional Neural Networks (CNN) for medical image Segmentation and
finally, compared our results with two famous architectures, include U-net
and FCN neural networks. For loss functions, we have utilized both Jaccard
distance and Binary-crossentropy and the optimization algorithm that has
used in this method is SGD+Nestrov algorithm. In this method, we have used
two preprocessing include resizing image’s dimensions for increasing the
speed of our process and Image augmentation for improving the results of
our network. Finally, we have implemented threshold technique as
postprocessing on the outputs of neural network to improve the contrast of
images. We have implemented our model on the famous publicly, PH2
Database, toward Melanoma lesion segmentation and chest Xray images
because as we have mentioned, these two types of medical images contain
hair artifacts and illumination variations and we are going to show the
robustness of our method for segmenting these images and compare it with
the other methods.
Results: Experimental results showed that this method could outperformed
two other famous architectures, include Unet and FCN convolutional neural
networks. Additionally, we could improve the performance metrics that have
used in dermoscopic and Chest-Xray segmentation which used before.
Conclusion: In this work, we have proposed an encoder-decoder framework
based on deep convolutional neural networks for medical image
segmentation on dermoscopic and Chest-Xray medical images. Two
techniques of image augmentation, image rotation and horizontal flipping on
the training dataset are performed before feeding it to the network for
training. The predictions produced from the model on test images were
postprocessed using the threshold technique to remove the blurry boundaries
around the predicted lesions
Keywords :
Deep learning , Convolutional neural networks , Medical image segmentation , Image processing , Computer vision
Journal title :
Journal of Electrical and Computer Engineering Innovations (JECEI)