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Signal Processing

2018

Principal component analysis

Articles 1 - 3 of 3

Full-Text Articles in Engineering

Vocal Processing With Spectral Analysis, Bradley J. Fitzgerald Dec 2018

Vocal Processing With Spectral Analysis, Bradley J. Fitzgerald

ELAIA

A well-known signal processing issue is that of the “cocktail party problem,” which A well-known signal processing issue is that of the “cocktail party problem,” which refers to the need to be able to separate speakers from a mixture of voices. A solution to this problem could provide insight into signal separation in a variety of signal processing fields. In this study, a method of vocal signal processing was examined to determine if principal component analysis of spectral data could be used to characterize differences between speakers and if these differences could be used to separate mixtures of vocal signals. …


Vocal Processing With Spectral Analysis, Bradley Fitzgerald May 2018

Vocal Processing With Spectral Analysis, Bradley Fitzgerald

Honors Program Projects

A well-known signal processing issue is that of the “cocktail party problem”, which refers to the need to be able to separate speakers from a mixture of voices. A solution to this problem could provide insight into signal separation in a variety of signal processing fields. In this study, a method of vocal signal processing was examined to determine if principal component analysis of spectral data may be used to characterize differences between speakers and if these differences may be used to separate mixtures of vocal signals. Processing was done on a set of voice recordings from 30 different speakers …


Weed And Crop Discrimination Through An Offline Computer Vision Algorithm, Phillip Jamison Putney Apr 2018

Weed And Crop Discrimination Through An Offline Computer Vision Algorithm, Phillip Jamison Putney

Scholar Week 2016 - present

With the recent global interest in organic farming and cultivation, many people are turning away from chemical-based herbicides and moving towards alternate methods to extirpate weeds living amongst their crops. Of the methods proposed, robotic weed detection and removal is the most promising because of its possibility to be completely autonomous. Several robust, fully-autonomous robots have been developed, although none have approved for commercial use. This paper proposes a weed and crop discrimination algorithm that utilizes an excessive green color filter paired with principal component analysis to detect spatial frequencies within an image corresponding to different types of weeds and …