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Book ChapterDOI

Least Information Loss (LIL) Conversion of Digital Images and Lessons Learned for Scientific Image Inspection

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TLDR
The main aim of this article is introducing least information loss (LIL) algorithm as a novel approach to minimize the information loss caused by the transformation the primary camera signals to 8 bit per pixel.
Abstract
Nowadays, most digital images are captured and stored at 16 or 12 bit per pixel integers, however, most personal computers can only display images in 8 bit per pixel integers. Besides, each microarray experiment produces hundreds of images which need larger storage space if images are stored in 16 or 12 bit. This is in most cases done by conversion of single images by an algorithm, which is not apparent to the user. A simple method to avoid the problem is converting 16 or 12-bit images to 8 bit by direct division of the 12-bit intervals into 256 sections and counting the number of points in each of them. Although this approach preserves the proportion of camera signals, it leads to severe loss of information due to losses in intensity depth resolution. The main aim of this article is introducing least information loss (LIL) algorithm as a novel approach to minimize the information loss caused by the transformation the primary camera signals (16 or 12 bit per pixels) to 8 bit per pixel. Least information loss algorithm is based on the omission of unoccupied intensities and transforming remaining points to 8 bit. This approach not only preserve information by storing intervals in the image EXIF file for further analysis, but also it improves object contrast for better visual inspection and object oriented classification. LIL algorithm may be applied also in image series where it enables comparison of primary camera data at scales identical over the whole series. This is particularly important in cases that the coloration is only apparent and reflect various physical processes such as in microscopy imaging.

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Citations
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Point Divergence Gain and Multidimensional Data Sequences Analysis

TL;DR: In this paper, the Renyi entropy was used to describe spatio-temporal changes between two consecutive discrete multidimensional distributions, and the information-entropic variables were introduced.
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Visual Exploration of Principles of Formation of Microscopic Image Intensities Using Image Explorer Software

TL;DR: The article demonstrates the most frequent mistakes made upon the transformation of digital images in biology and reports methods to avoid misconceptions due to apparent coloration after transformation of the original signal on the camera chip into color image.
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Spectroscopic Approach to Correction and Visualisation of Bright-Field Light Transmission Microscopy Biological Data

TL;DR: In this article, a spectroscopic approach was proposed to suppress data distortions originating from the light interactions with elements in the optical path, poor sensor reproduction (geometrical defects of the camera sensor and some peculiarities of sensor sensitivity).
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Information Limits of Optical Microscopy: Application to Fluorescent Labelled Tissue Section

TL;DR: The article demonstrates some less known principles of image build-up in diffractive microscopy and their usage in analysis unravelling the smallest localized information about the original object - an electromagnetic centroid.
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New insights into information provided by light microscopy: application to fluorescently labelled tissue section

TL;DR: It is demonstrated that superresolution down to the Nobelish level can be obtained from commonplace widefield bright-field and fluorescence microscopy and bring new perspectives on co-localization in fluorescent microscopy.
References
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Patent

Color imaging array

TL;DR: In this article, a mosaic of selectively transmissive filters is superposed in registration with a solid state imaging array having a broad range of light sensitivity, the distribution of filter types in the mosaic being in accordance with the above-described patterns.
Book ChapterDOI

Multifractality in Imaging: Application of Information Entropy for Observation of Inner Dynamics Inside of an Unlabeled Living Cell in Bright-Field Microscopy

TL;DR: The determination of image features based on a general assumption that images transmitted by an optical microscope have multifractal character is presented, and a Point Divergence Gain variable is derived from the Renyi entropy to identify the border of the point spread function of immovable identifiable objects.
Journal ArticleDOI

Construction of the phenomenological model of Belousov–Zhabotinsky reaction state trajectory

TL;DR: A state trajectory is created using several selected image identifiers (point information gain entropy – Hα) which define an approximate state space which may be analysed using multivariate analysis.
Posted Content

Point information gain, point information gain entropy and point information gain entropy density as measures of semantic and syntactic information of multidimensional discrete phenomena

TL;DR: The main properties of PIE/PIED spectra for the real data on the example of several images are demonstrated, and possible further utilizations in other fields of data processing are discussed.
Book ChapterDOI

Visual Exploration of Principles of Formation of Microscopic Image Intensities Using Image Explorer Software

TL;DR: The article demonstrates the most frequent mistakes made upon the transformation of digital images in biology and reports methods to avoid misconceptions due to apparent coloration after transformation of the original signal on the camera chip into color image.