white diffuse reflectance standard srt-99-050 (Labsphere Inc)
Structured Review

White Diffuse Reflectance Standard Srt 99 050, supplied by Labsphere Inc, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/product/white+diffuse+reflectance+standard+srt-99-050/pmc12136042-194-3-7?v=Labsphere+Inc
Average 90 stars, based on 1 article reviews
Images
1) Product Images from "Machine reading and recovery of colors for hemoglobin-related bioassays and bioimaging"
Article Title: Machine reading and recovery of colors for hemoglobin-related bioassays and bioimaging
Journal: Science Advances
doi: 10.1126/sciadv.adt4831
Figure Legend Snippet: ( A ) Detrimental color variations in digital photos of biological tissue captured under various white-light illumination conditions: light-emitting diodes (LEDs) with color temperature of 3000, 4300, and 5800 K, as well as fluorescent tube light. The colors under CIE illuminant E (equal energy radiator or spectrally uniform illumination) can be considered absolute. CIE illuminant E is achieved through spectral normalization using a diffuse (Lambertian) reflectance standard (see Materials and Methods). ( B ) Light conditions having distinct spectral profiles: fluorescent tube, incandescent light, white LED, and sunlight (fig. S1). ( C ) Representative photos of whole blood–mimicking samples in cuvettes at different hemoglobin (Hgb) concentrations, acquired under various light conditions. A conventional color chart (Macbeth ColorChecker or X-Rite ColorChecker) is juxtaposed with the samples. ( D ) Smartphone model–dependent RGB spectral response functions (also known as spectral sensitivity): Apple iPhone 12 Pro, Apple iPhone SE, Samsung Galaxy S21, and Samsung Galaxy A52 (fig. S2). ( E ) Representative photos captured using various smartphone models. ( F ) File formats with different bit depths (color depths) in the R, G, and B color channels: JPEG (8-bit depth), RAW (10-bit depth), and MP4 (8-bit depth). ( G ) Representative photo acquisition scenarios based on combinations of light conditions (B), smartphone models (D), and file formats (F). When multiple photos of the same sample are captured under varying conditions, accurate and precise color recovery ensures that recovered color values converge to the ground truth.
Techniques Used:
Figure Legend Snippet: ( A ) Macbeth ColorChecker containing 24 reference colors used for general photography. ( B ) Corresponding CIE xy chromaticity values under CIE illuminant E, measured using a spectrometer and a reflectance standard. The wide gamut of Macbeth ColorChecker overlaps with the sRGB color space. ( C ) Corresponding CIE LAB values under CIE illuminant E on the a * and b * axes. ( D ) Corresponding L* values as functions of a* and b* values. ( E and F ) Parametric spectral modeling of biological tissue (peripheral tissue and blood samples). Physiologically possible color variations are captured by 12,240 synthesized spectral data of peripheral tissue (E) and 10,000 synthesized spectral data of whole blood (F) (see Materials and Methods). ( G ) Blood Hgb gamut defined by three primary points of CIE xy chromaticity: ( x , y ) = (0.30, 0.31), (0.47, 0.42), and (0.63, 0.33). ( H ) Corresponding CIE LAB values on the a * and b * axes. ( I ) Corresponding L* values as functions of a* and b* values. ( J and K ) Importance of CIE XYZ Euclidean distance metric for machine readability and learning in color-based diagnostics, compared to Delta E values including CIE94 ( ∆ E 94 * ) and CIEDE2000 ( ∆ E 00 * ). Eleven representative colors are selected from the Hgb gamut, with equal CIE XYZ Euclidean distances between all pairs of adjacent colors. Delta E values incorporate human visual judgment and perception.
Techniques Used: Synthesized
Figure Legend Snippet: ( A ) One-shot transduction learning of neural network–based color recovery with HemaChrome. The neural network is trained for each photo without relying on any preexisting training dataset. The training dataset consists of the color values of the reference colors in HemaChrome. Once trained on the specific photo, the network processes the RGB values acquired from the sample of interest in the photo to recover the corresponding CIE XYZ values. ( B ) HemaChrome chart with 116 reference colors for neural network–based color recovery. ( C ) Corresponding CIE xy chromaticity values under CIE illuminant E, measured using a spectrometer and a reflectance standard. ( D ) Corresponding CIE LAB values under CIE illuminant E on the a * and b * axes. ( E ) Corresponding L* values as functions of a* and b* values. ( F ) Representative photo of blood Hgb–mimicking samples to recover their absolute colors (under CIE illuminant E). ( G to J ) Average color differences between the ground truth and recovered CIE XYZ values for each test sample from photos captured across 36 diverse photo acquisition scenarios . The root mean square error (RMSE) (G), root mean square relative error (RMSRE) (H), average CIE94 ( ∆ E 94 * ) (I), and average CIEDE2000 ( ∆ E 00 * ) (J) are compared (eqs. S1, S2, S6, and S7). Among the three color correction methods, neural network color recovery using HemaChrome consistently returns minimal errors across all test samples.
Techniques Used: Transduction