Mike Wong will present his General Exam "MadEye: Boosting Live Video Analytics Accuracy with Adaptive Camera Configurations" on Monday, May 15, 2023 at 1pm in CS 302.

The members of his committee are as follows: Ravi Netravali (adviser), Amit Levy, and Wyatt Lloyd


Abstract:

Camera orientations (i.e., rotation and zoom) govern the content that a camera captures in a given scene, which in turn heavily influences the accuracy of live video analytics pipelines. However, existing analytics approaches leave this crucial adaptation knob untouched, instead opting to only alter the way that captured images from fixed orientations are encoded, streamed, and analyzed. We present MadEye, a camera-server system that automatically and continually adapts orientations to maximize accuracy for the workload and resource constraints at hand. To realize this using commodity pan-tilt-zoom (PTZ) cameras, MadEye embeds (1) a search algorithm that rapidly explores the massive space of orientations to identify a fruitful subset at each time, and (2) a novel knowledge distillation strategy to efficiently (with only camera resources) select the ones that maximize workload accuracy. Experiments on diverse workloads show that MadEye boosts accuracy by 2.9-25.7% for the same resource usage, or achieves the same accuracy with 2-3.7× lower resource costs.


Link to abstract and reading list can be found here:

https://docs.google.com/document/d/1bQBds_E_Iiq0D8pIM0MYTV4gakVTCBWa1bUh4myBVmk/edit?usp=sharing


Everyone is invited to attend the talk, and those faculty wishing to remain for the oral exam following are welcome to do so.