SURF 2024: Task-Relevant Metrics for Perception
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2024 SURF Task-Relevant Metrics for Perception
- Mentor: Richard Murray
- Co-mentor: Apurva Badithela
Project Description
Problem
In this SURF, we will explore the interface between perception and planning more carefully. Misclassification or misdetection in a single frame is unlikely to trigger a different decision from the planner. Therefore, tracking objects across multiple frames needs to be accounted
Goals for this SURF include: 1. Proposing new metrics for tracking or other perception tasks, and rigorously connecting these metrics to system-level evaluations of safety. 2. Evaluating state-of-the-art perception models on the nuScenes dataset with respect to tracking metrics derived from system-level specifications 3. Time permitting, to validate theoretical results on a hardware platform such as Duckietown.
Desired:
- Experience programming in Python, ROS, OpenCV.
- Coursework in control, robotics, computer vision.
- Interest in theoretical research, robotics, and working with hardware, and industry datasets such as nuScenes.
References:
[1]