3,564 research outputs found
ECGadv: Generating Adversarial Electrocardiogram to Misguide Arrhythmia Classification System
Deep neural networks (DNNs)-powered Electrocardiogram (ECG) diagnosis systems
recently achieve promising progress to take over tedious examinations by
cardiologists. However, their vulnerability to adversarial attacks still lack
comprehensive investigation. The existing attacks in image domain could not be
directly applicable due to the distinct properties of ECGs in visualization and
dynamic properties. Thus, this paper takes a step to thoroughly explore
adversarial attacks on the DNN-powered ECG diagnosis system. We analyze the
properties of ECGs to design effective attacks schemes under two attacks models
respectively. Our results demonstrate the blind spots of DNN-powered diagnosis
systems under adversarial attacks, which calls attention to adequate
countermeasures.Comment: Accepted by AAAI 202
Evaluating Visual Realism in Drawing Areas of Interest on UML Diagrams
Areas of interest (AOIs) are defined as an addition to UML diagrams: groups of elements of system architecture diagrams that share some common property. Some methods have been proposed to automatically draw AOIs on UML diagrams. However, it is not clear how users perceive the results of such methods as compared to human-drawn areas of interest. We present here a process of studying and improving the perceived quality of computer-drawn AOIs. We qualitatively evaluated how users perceive the quality of computer- and human-drawn AOIs, and used these results to improve an existing algorithm for drawing AOIs. Finally, we designed a quantitative comparison for AOI drawings and used it to show that our improved renderings are closer to human drawings than the original rendering algorithm results. The combined user evaluation, algorithmic improvements, and quantitative comparison support our claim of improving the perceived quality of AOIs rendered on UML diagrams.
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