Color Counting for Fashion, Art, and Design
- URL: http://arxiv.org/abs/2110.06682v1
- Date: Wed, 13 Oct 2021 12:42:15 GMT
- Title: Color Counting for Fashion, Art, and Design
- Authors: Mohammed Al-Rawi
- Abstract summary: First step in color modelling is to estimate the number of colors in the item / object.
We propose a novel color counting method based on cumulative color histogram.
This work is the first of its kind that addresses the problem of color-counting machine.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Color modelling and extraction is an important topic in fashion, art, and
design. Recommender systems, color-based retrieval, decorating, and fashion
design can benefit from color extraction tools. Research has shown that
modeling color so that it can be automatically analyzed and / or extracted is a
difficult task. Unlike machines, color perception, although very subjective, is
much simpler for humans. That being said, the first step in color modeling is
to estimate the number of colors in the item / object. This is because color
models can take advantage of the number of colors as the seed for better
modelling, e.g., to make color extraction further deterministic. We aim in this
work to develop and test models that can count the number of colors of clothing
and other items. We propose a novel color counting method based on cumulative
color histogram, which stands out among other methods. We compare the method we
propose with other methods that utilize exhaustive color search that uses
Gaussian Mixture Models (GMMs) and K-Means as bases for scoring the optimal
number of colors, in addition to another method that relies on deep learning
models. Unfortunately, the GMM, K-Means, and Deep Learning models all fail to
accurately capture the number of colors. Our proposed method can provide the
color baseline that can be used in AI-based fashion applications, and can also
find applications in other areas, for example, interior design. To the best of
our knowledge, this work is the first of its kind that addresses the problem of
color-counting machine.
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