Desenvolvimento de um sistema para detecção de objetos de uma imagem de referência estática utilizando método estatístico paramétrico para aplicações de Chroma Key
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Universidade do Estado do Amazonas
Resumo
The traditional Chroma Key method employs a technique called Key Mean Clustering, which
demands a substantial amount of storage through buffers, as well as system speed and
complexity for hardware implementation. This research project presents the MATLAB
validation of the development of a low-complexity implementation system for Chroma Key
applications. This system performs the extraction of objects from a static reference image with
a green background using image segmentation based on a parametric statistical model. This
model utilizes an average image of color components as a reference to classify each image
element. For final validation, 120 images were used for testing, consisting of 37 photos with a
green background and 83 photos with the object to be detected present. Additionally,
performance evaluation was conducted using the following metrics: precision, recall, Fmeasure, and confidence factor. Utilizing the RGB color space, a maximum accuracy of 100%
and a minimum of 99.4% were achieved. In the case of the YCbCr color space, the maximum
accuracy attained was 100%, and the minimum was 99.9%. Through statistical inference
testing, it can be concluded that there are no statistically significant differences between the two
color spaces.
