Showing 301 - 312 results of 312 for search '(((("image processing algorithm") OR ("data processing algorithm"))) OR ("element ree algorithm"))', query time: 0.59s Refine Results
  1. 301

    DataSheet1_WATERHYPERNET: a prototype network of automated in situ measurements of hyperspectral water reflectance for satellite validation and water quality monitoring.CSV by Kevin G. Ruddick (18197815)

    Published 2024
    “…Analysis of the differences between satellite and in situ water reflectance measurements, particularly unmasked outliers, can provide recommendations on where satellite data processing algorithms need to be improved. In a massively multi-mission context, including Newspace constellations, hyperspectral missions and missions with broad spectral bands not designed for “water colour”, the advantage of hyperspectral over multispectral in situ measurements is clear. …”
  2. 302

    DataSheet8_WATERHYPERNET: a prototype network of automated in situ measurements of hyperspectral water reflectance for satellite validation and water quality monitoring.CSV by Kevin G. Ruddick (18197815)

    Published 2024
    “…Analysis of the differences between satellite and in situ water reflectance measurements, particularly unmasked outliers, can provide recommendations on where satellite data processing algorithms need to be improved. In a massively multi-mission context, including Newspace constellations, hyperspectral missions and missions with broad spectral bands not designed for “water colour”, the advantage of hyperspectral over multispectral in situ measurements is clear. …”
  3. 303

    DataSheet7_WATERHYPERNET: a prototype network of automated in situ measurements of hyperspectral water reflectance for satellite validation and water quality monitoring.ZIP by Kevin G. Ruddick (18197815)

    Published 2024
    “…Analysis of the differences between satellite and in situ water reflectance measurements, particularly unmasked outliers, can provide recommendations on where satellite data processing algorithms need to be improved. In a massively multi-mission context, including Newspace constellations, hyperspectral missions and missions with broad spectral bands not designed for “water colour”, the advantage of hyperspectral over multispectral in situ measurements is clear. …”
  4. 304

    DataSheet4_WATERHYPERNET: a prototype network of automated in situ measurements of hyperspectral water reflectance for satellite validation and water quality monitoring.ZIP by Kevin G. Ruddick (18197815)

    Published 2024
    “…Analysis of the differences between satellite and in situ water reflectance measurements, particularly unmasked outliers, can provide recommendations on where satellite data processing algorithms need to be improved. In a massively multi-mission context, including Newspace constellations, hyperspectral missions and missions with broad spectral bands not designed for “water colour”, the advantage of hyperspectral over multispectral in situ measurements is clear. …”
  5. 305

    DataSheet9_WATERHYPERNET: a prototype network of automated in situ measurements of hyperspectral water reflectance for satellite validation and water quality monitoring.CSV by Kevin G. Ruddick (18197815)

    Published 2024
    “…Analysis of the differences between satellite and in situ water reflectance measurements, particularly unmasked outliers, can provide recommendations on where satellite data processing algorithms need to be improved. In a massively multi-mission context, including Newspace constellations, hyperspectral missions and missions with broad spectral bands not designed for “water colour”, the advantage of hyperspectral over multispectral in situ measurements is clear. …”
  6. 306

    Table1_WATERHYPERNET: a prototype network of automated in situ measurements of hyperspectral water reflectance for satellite validation and water quality monitoring.docx by Kevin G. Ruddick (18197815)

    Published 2024
    “…Analysis of the differences between satellite and in situ water reflectance measurements, particularly unmasked outliers, can provide recommendations on where satellite data processing algorithms need to be improved. In a massively multi-mission context, including Newspace constellations, hyperspectral missions and missions with broad spectral bands not designed for “water colour”, the advantage of hyperspectral over multispectral in situ measurements is clear. …”
  7. 307

    DataSheet2_WATERHYPERNET: a prototype network of automated in situ measurements of hyperspectral water reflectance for satellite validation and water quality monitoring.ZIP by Kevin G. Ruddick (18197815)

    Published 2024
    “…Analysis of the differences between satellite and in situ water reflectance measurements, particularly unmasked outliers, can provide recommendations on where satellite data processing algorithms need to be improved. In a massively multi-mission context, including Newspace constellations, hyperspectral missions and missions with broad spectral bands not designed for “water colour”, the advantage of hyperspectral over multispectral in situ measurements is clear. …”
  8. 308

    Supplementary Material for: How Much Do Focal Infarcts Distort White Matter Lesions and Global Cerebral Atrophy Measures? by Wang X. (2828795)

    Published 2012
    “…Such stroke lesions can have similar signals to WML and cerebrospinal fluid (CSF) on magnetic resonance (MR) images, and may be classified accidentally as WML or CSF by MR image processing algorithms, distorting WML and brain atrophy volume from the true volume. …”
  9. 309

    Video_2_Development and Clinical Application of a Novel Non-contact Early Airflow Limitation Screening System Using an Infrared Time-of-Flight Depth Image Sensor.MP4 by Hiroki Takamoto (9364688)

    Published 2020
    “…The EAFL-SS comprised an 850 nm infrared ToF depth image sensor (224 × 171 pixels) and custom-built data processing algorithms to visualize anterior-thorax three-dimensional motions in real-time. …”
  10. 310

    Video_1_Development and Clinical Application of a Novel Non-contact Early Airflow Limitation Screening System Using an Infrared Time-of-Flight Depth Image Sensor.MP4 by Hiroki Takamoto (9364688)

    Published 2020
    “…The EAFL-SS comprised an 850 nm infrared ToF depth image sensor (224 × 171 pixels) and custom-built data processing algorithms to visualize anterior-thorax three-dimensional motions in real-time. …”
  11. 311

    IPOL: Image Processing On Line by Gabriele Facciolo (397809)

    Published 2013
    “…The goal of IPOL is to provide reference implementations for classical and new image processing algorithms.<br>IPOL is not a prototype, in fact it’s been running since 2011.…”
  12. 312

    <b>Intelligent Compaction Measurement Value</b><b> Dataset by </b><b>SPARC Intelligent Compaction Analyzer (ICA)</b> by Rajitha Ranasinghe (13147044)

    Published 2024
    “…</li><li>Refine and validate data processing algorithms.</li><li>Research and develop experimental and established Intelligent Compaction Measurement Values (ICMVs).…”