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Don Kulasiri

Researcher at Canterbury of New Zealand

Publications -  137
Citations -  1217

Don Kulasiri is an academic researcher from Canterbury of New Zealand. The author has contributed to research in topics: Stochastic differential equation & Medicine. The author has an hindex of 18, co-authored 126 publications receiving 1050 citations. Previous affiliations of Don Kulasiri include American College of Surgeons & Lincoln University (New Zealand).

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Prediction of lamb tenderness using image surface texture features

TL;DR: In this article, the usefulness of raw meat surface characteristics (geometric and texture) in predicting cooked meat tenderness was investigated, and four feature sets comprising six geometric, four difference histogram, eight co-occurrence and four run length features were generated based on the results of dimensionality reduction.
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Using insect sniffing devices for detection

TL;DR: Insect-sensing systems are not widely studied or accepted as proven biological sensors and further studies are needed to examine additional insect species and to develop better methods of using their olfactory system for detecting odorants of interest.
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Classification of lamb carcass using machine vision: Comparison of statistical and neural network analyses

TL;DR: The ability of artificial neural network (ANN) models to predict the lamb carcass grades using features extracted from lamb chop images was compared with multivariate statistical model (discriminant function analysis (DFA) with respect to the classification accuracy.
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Validating models of complex, stochastic, biological systems

TL;DR: It is concluded that, while time consuming, development of system-specific objective indices may often be the most useful way to compare simulation output and field data when complex biological entities are modelled.
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Modelling of circadian rhythms in Drosophila incorporating the interlocked PER/TIM and VRI/PDP1 feedback loops

TL;DR: This study presents a model to represent the transcriptional regulatory network essential for the circadian rhythmicity in Drosophila, and simulates sustained circadian oscillations in mRNA and protein concentrations in constant darkness in agreement with experimental observations.