Please use this identifier to cite or link to this item: http://univ-bejaia.dz/dspace/123456789/14435
Title: Efficient convolutional neural network for 2d echochardiographic images segmentation:
Other Titles: application on camus dataset
Authors: Djouad, Mohand
Dada, Idriss
Aitmaten, Zahir ;promoteur
Keywords: 2d echochardiographic : Application on camus dataset : Efficient convolutional*
Issue Date: 2020
Publisher: univ. A/Mira .Bejaia
Abstract: Part of the work carried out within the framework of this thesis involves the automatic segmentation of echocardiographic images. The separation and identification of the different structures from accurate delineation, called semantic segmentation, is the first step to measure surfaces or volumes. However, segmentation in echocardiography is a particularly difficult task due to the lack of clear boundaries, a low signal-to-noise ratio, the speckled texture specific to ultrasound images, and the presence of numerous and complex image artifacts such as as reverberations and loss of signal. We have presented a fully automatic deep learning approach based on the U-NET architecture by integrating EfficientNet as an encoder. Our network has achieved 97% accuracy on training data as well as validation data, which makes our network powerful. The results of the test on the CAMUS challenge dataset clearly show this with a Dice score above 0.8. As prospects, we want to make changes to our network using the transfer learning technique in order to improve it and solve the problem of metadata of the 19 patients.
Description: Option : Artificiel Intelligence
URI: http://hdl.handle.net/123456789/14435
Appears in Collections:Mémoires de Master

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