Alon Harell

Alon Harell
Simon Fraser University · School of Engineering Science

Bachelor of Science

About

12
Publications
2,209
Reads
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123
Citations
Citations since 2017
12 Research Items
123 Citations
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Publications

Publications (12)
Preprint
Full-text available
In recent years, there has been a sharp increase in transmission of images to remote servers specifically for the purpose of computer vision. In many applications, such as surveillance, images are mostly transmitted for automated analysis, and rarely seen by humans. Using traditional compression for this scenario has been shown to be inefficient in...
Preprint
Full-text available
Passing during power plays in hockey is a crucial component to move one's team closer to scoring a goal. With the use of women's ice hockey event and tracking data from the elimination round games during the 2022 Winter Olympics, we evaluate passing and assess players' risk-reward behaviours in these high intensity moments. We develop a model for p...
Preprint
Full-text available
Everyone "knows" that compressing a video will degrade the accuracy of object tracking. Yet, a literature search on this topic reveals that there is very little documented evidence for this presumed fact. Part of the reason is that, until recently, there were no object tracking datasets for uncompressed video, which made studying the effects of com...
Article
Non-intrusive load monitoring (NILM) allows users and energy providers to gain insight into home appliance electricity consumption using only the building’s smart meter. Most current techniques for NILM are trained using significant amounts of labeled appliances power data. The collection of such data is challenging, making data a major bottleneck...
Preprint
Full-text available
Non-intrusive load monitoring (NILM) allows users and energy providers to gain insight into home appliance electricity consumption using only the building's smart meter. Most current techniques for NILM are trained using significant amounts of labeled appliances power data. The collection of such data is challenging, making data a major bottleneck...
Preprint
Full-text available
Methods for creating a system to automate the collection of swimming analytics on a pool-wide scale are considered in this paper. There has not been much work on swimmer tracking or the creation of a swimmer database for machine learning purposes. Consequently, methods for collecting swimmer data from videos of swim competitions are explored and an...
Preprint
Full-text available
Non-intrusive load monitoring (NILM) helps meet energy conservation goals by estimating individual appliance power usage from a single aggregate measurement. Deep neural networks have become increasingly popular in attempting to solve NILM problems; however, many of them are not causal which is important for real-time application. We present a caus...
Conference Paper
Full-text available
Understanding how appliances consume power is important for energy conservation. Non-intrusive load monitoring (NILM) helps meeting energy conservation goals by inferring individual appliance power usage from a single measurement. By using additional, readily available, sensor information such as weather data, it is possible to improve the accuracy...

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Projects

Projects (2)
Project
Create efficient representations and coding approaches to support machine-based inference and analysis.
Project
Develop tools to understand, design, and optimize the efficacy of AI models for edge-cloud shared inference.