DocumentCode
3062039
Title
Boosting minimalist classifiers for blemish detection in potatoes
Author
Barnes, Michael ; Duckett, Tom ; Cielniak, Grzegorz
Author_Institution
Lincoln Univ., Lincoln, UK
fYear
2009
fDate
23-25 Nov. 2009
Firstpage
397
Lastpage
402
Abstract
This paper introduces novel methods for detecting blemishes in potatoes using machine vision. After segmentation of the potato from the background, a pixel-wise classifier is trained to detect blemishes using features extracted from the image. A very large set of candidate features, based on statistical information relating to the colour and texture of the region surrounding a given pixel, is first extracted. Then an adaptive boosting algorithm (AdaBoost) is used to automatically select the best features for discriminating between blemishes and non-blemishes. With this approach, different features can be selected for different potato varieties, while also handling the natural variation in fresh produce due to different seasons, lighting conditions, etc. The results show that the method is able to build ¿minimalist¿ classifiers that optimise detection performance at low computational cost. In experiments, minimalist blemish detectors were trained for both white and red potato varieties, achieving 89.6% and 89.5% accuracy respectively.
Keywords
computer vision; feature extraction; image resolution; object detection; statistical analysis; AdaBoost; adaptive boosting algorithm; blemish detection; feature extraction; image colour; image texture; machine vision; minimalist classifiers; pixel-wise classifier; potato blemish detection; statistical information; Boosting; Computational efficiency; Computer vision; Data mining; Detectors; Feature extraction; Image segmentation; Machine vision; Optimization methods; Pixel;
fLanguage
English
Publisher
ieee
Conference_Titel
Image and Vision Computing New Zealand, 2009. IVCNZ '09. 24th International Conference
Conference_Location
Wellington
ISSN
2151-2205
Print_ISBN
978-1-4244-4697-1
Electronic_ISBN
2151-2205
Type
conf
DOI
10.1109/IVCNZ.2009.5378372
Filename
5378372
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