Difference between revisions of "Identifying Appropriate Machine Learning Models for Multi Robot Secure Coordination in a Healthcare Facility"
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==Milestones and Goals== | ==Milestones and Goals== | ||
− | + | {| class="wikitable" | |
+ | !Week | ||
+ | !Description | ||
+ | |- | ||
+ | |||
+ | !1: Orientation | ||
+ | | | ||
+ | * Meet other REU students and mentors | ||
+ | * Learn basic data science concepts | ||
+ | |- | ||
+ | |||
+ | !2: Initial Reading | ||
+ | | | ||
+ | * Investigate API for Temi and Loomo robots. | ||
+ | * Learn about adversarial networks and potential attacks by looking at recent conferences, workshops, and journals published. | ||
+ | * Find a specific adversarial attack to research | ||
+ | |} |
Revision as of 22:23, 5 June 2020
Student Researcher: Shota Nemoto
Mentor: Debbie Perouli
Project Description
In the near future, the U.S. will experience a severe shortage of Registered Nurses. A proposed solution is the development of Robotic Caregivers (RCGs), both service and social robots, which will be able to provide care autonomously. Commercial service robots that are currently available, such as Temi and Loomo, provide APIs for developers to create applications for these RCGs. Many applications will input sensor data into machine learning models, which may leave it vulnerable to attack from an adversary attempting to retrieve a patient’s personal data or fool a model into mislabeling or misclassifying an input.
The objective of this project is to research an adversarial attack on these robots.
Milestones and Goals
Week | Description |
---|---|
1: Orientation |
|
2: Initial Reading |
|