Stacked Autoencoders Deep Learning Approach for Left Ventricular Localization in Magnetic Resonance Slices

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Springer Science and Business Media Deutschland GmbH

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info:eu-repo/semantics/closedAccess

Abstract

Deep learning (DL) is an effective method for medical object detection. Studies show that deep networks can achieve accuracy in medical segmentation and detection tasks. This is due to the depth and training methods of deep networks which allows them to derive different levels of abstractions of input mages. In this paper, the left ventricle detection task is carried out using a deep network called stacked auto-encoder (SAE). The networks take off this task as a binary classification task wherein left and non-left ventricles cropped images are being recognized by the SAE. Once the network recognizes left and non-left ventricles, the whole task starts by initiating a sliding window that moves through the whole magnetic resonance (MR) slice till a left ventricle is detected. Experimentally, the network showed effective detection performance when target images are noisy as it is seen that it can detect left ventricles in target images with up to 10% of salt and pepper noise. © 2022, The Author(s), under exclusive license to Springer Nature Switzerland AG.

Description

International Conference on Emerging Technologies and Intelligent Systems, ICETIS 2021 -- 2021-06-25 through 2021-06-26 -- Al Buraimi -- 263669

Keywords

Binary classification, Deep learning, Intelligent system, Sliding windows, Stacked auto-encoder

Journal or Series

Lecture Notes in Networks and Systems

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Volume

322

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