Detection and Classification of Lung Abnormalities by use of CNN
Authors: Raut Ankita, Gudaghe Hrutuja, Bilware Ashvini, Aditi Potphode, Pawar Umesh
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Abstract: Automatic defects detection in CT images is very important in many diagnostic and therapeutic applications. Because of high quantity data in CT images and blurred boundaries, tumor segmentation and classification is very hard. This work has introduced one automatic lung cancer detection method to increase the accuracy and yield and decrease the diagnosis time. The goal is classifying the tissues to three classes of normal, benign and malignant. In MR images, the amount of data is too much for manual interpretation and analysis. During past few years, lung cancer detection in CT has become an emergent research area in the field of medical imaging system. Accurate detection of size and location of lung cancer plays a vital role in the diagnosis of lung cancer. The diagnosis method consists of four stages, pre-processing of CT images, feature, extraction, and classification, the features are extracted based on DTCWT and PNN. In the last stage, PNN employed to classify the normal and abnormal.
Keywords: Deep Learning, OpenCV, Lung Cancer, Dual-Tree Complex Wavelet Transformation
Paper Id: 230155
Published On: 2023-05-21
Published In: Volume 11, Issue 3, May-June 2023
Cite This: Detection and Classification of Lung Abnormalities by use of CNN - Raut Ankita, Gudaghe Hrutuja, Bilware Ashvini, Aditi Potphode, Pawar Umesh - IJIRMPS Volume 11, Issue 3, May-June 2023.