1,562
0
1
References
- 1. Kumpulainen, P., Cardó, A. V., Somppi, S., Törnqvist, H., Väätäjä, H., Majaranta, P., Gizatdinova, Y., Hoog Antink, C., Surakka, V., Kujala, M. V., Vainio, O., & Vehkaoja, A. (2021). Dog behaviour classification with movement sensors placed on the harness and the collar. Applied Animal Behaviour Science, 241, 105393. https://doi.org/10.1016/j.applanim.2021.105393
Please wait...
About This Project
Edge machine learning refers to the process of running embedded ML models on site using devices capable of collecting, processing, and recognizing patterns within collections of raw data. This project seeks to train one of such devices (Nicla SenseME) with dog data from the Earth Species' Bio-logger Ethogram Benchmark (BEBE). The board will be used as a smart dog collar, with its ML inferences controlling haptics vibrations in a bracelet wore by a person.
More Lab Notes From This Project
Browse Other Projects on Experiment
Related Projects
Designing new enzymes for sustainable fertilizer
Agriculture relies on phosphorous (P) fertilizer, which generates algae blooms and significant GHG emissions...
Generative Design of Programmable Metal-Binding Proteins for Bioremediation
The mining of heavy metals accounts for about 10% of global greenhouse gas emissions. Moreover, exposure...
Generalizable Computational Pipeline for Engineering Ultrastable Variants of Carbonic Anhydrase
AI-driven protein design is undergoing a transformation, driven by recent breakthroughs such as AlphaFold...