Product Quantization for Surface Soil Similarity
Haley Dozier, Althea Henslee, Ashley Abraham, Andrew Strelzoff, Mark Chappell

TL;DR
This paper introduces a machine learning pipeline that uses product quantization to create high-dimensional, data-driven soil taxonomies with improved accuracy and flexibility over traditional methods.
Contribution
The work combines product quantization with systematic parameter evaluation to enhance soil classification accuracy and adaptability in high-dimensional datasets.
Findings
Improved soil taxonomy accuracy using ML-based methods.
Systematic parameter evaluation enhances classification results.
Flexible classifications tailored to specific applications.
Abstract
The use of machine learning (ML) techniques has allowed rapid advancements in many scientific and engineering fields. One of these problems is that of surface soil taxonomy, a research area previously hindered by the reliance on human-derived classifications, which are mostly dependent on dividing a dataset based on historical understandings of that data rather than data-driven, statistically observable similarities. Using a ML-based taxonomy allows soil researchers to move beyond the limitations of human visualization and create classifications of high-dimension datasets with a much higher level of specificity than possible with hand-drawn taxonomies. Furthermore, this pipeline allows for the possibility of producing both highly accurate and flexible soil taxonomies with classes built to fit a specific application. The machine learning pipeline outlined in this work combines product…
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