S. Mandayam/ECE Dept./Rowan University Ultrasonic Testing Thermal Imaging Acoustic Emission Test Platforms Digital Signal/Image Processing Data Fusion.

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S. Mandayam/ECE Dept./Rowan University Ultrasonic Testing Thermal Imaging Acoustic Emission Test Platforms Digital Signal/Image Processing Data Fusion Advanced Visualization Virtual Reality This research work is sponsored by: US Department of Energy National Science Foundation ExxonMobil/PERF (AE/FFS) Gas Pipeline Inspection 0.0” 0.2” 0.4” 0.6” Artificial Neural Networks         x1x1 x2x2 x3x3 y1y1 y2y2   w ij w jk w kl Input Layer Hidden Layers Output Layer Magnetic Imaging ECE-01 ECE-02 ECE-03

S. Mandayam/ECE Dept./Rowan University Virtual Reality (VR) CAVE IMMERSADESK ECE-03 ECE-06

S. Mandayam/ECE Dept./Rowan University Pipeline and Topography The static pipeline model is incorporated with geographic data for evaluating remediation measures ECE-03

S. Mandayam/ECE Dept./Rowan University DD(X) Class Destroyers ECE-06

S. Mandayam/ECE Dept./Rowan University Breast Cancer Risk Analysis Original Digitized Mammogram Edge Detection Radiodense Tissue Segmentation Radiolucent (Black) Radiodense (White) Adaptive Threshold ECE-04

S. Mandayam/ECE Dept./Rowan University Tissue Compression Compression Plate Film Holder CC View ECE-04

S. Mandayam/ECE Dept./Rowan University 3-D Shape Recognition ECE-05