Result for 552EF749C286DC66E1AE064386651CD223517E8F

Query result

Key Value
FileName./usr/lib/python3/dist-packages/pyspectral/tests/test_rsr_reader.py
FileSize7496
MD5D403F50E38F5846A1527EE48FDEB2C43
SHA-1552EF749C286DC66E1AE064386651CD223517E8F
SHA-256C8F641F2FEFFB8A5F15777FFB3255CDFB083075405301536F4C5DD29A965803D
SSDEEP96:l2zm8ZkEN07I/delewSf/gMJ7pPrhA6qRURlQIz5j5sH5iLFRUrtkz5H74sRUSGH:2m8E7ielKf/7zPBlQ7YLYtU4GK1
TLSHT11DF1A8FC06C7CD7246239A49CA1B699121179D171F5EE080FB2C376C6F296DDC9E08BA
hashlookup:parent-total1
hashlookup:trust55

Network graph view

Parents (Total: 1)

The searched file hash is included in 1 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
FileSize185880
MD50916E097D0356A42C436CE0966AF9955
PackageDescriptionReading and manipulaing satellite sensor spectral responses Reading and manipulaing satellite sensor spectral responses and the solar spectrum, to perform various corrections to VIS and NIR band data. . Given a passive sensor on a meteorological satellite PySpectral provides the relative spectral response (rsr) function(s) and offer some basic operations like convolution with the solar spectrum to derive the in band solar flux, for instance. . The focus is on imaging sensors like AVHRR, VIIRS, MODIS, ABI, AHI, OLCI and SEVIRI. But more sensors are included and if others are needed they can be easily added. With PySpectral it is possible to derive the reflective and emissive parts of the signal observed in any NIR band around 3-4 microns where both passive terrestrial emission and solar backscatter mix the information received by the satellite. Furthermore PySpectral allows correcting true color imagery for the background (climatological) atmospheric signal due to Rayleigh scattering of molecules, absorption by atmospheric gases and aerosols, and Mie scattering of aerosols.
PackageMaintainerUbuntu Developers <ubuntu-devel-discuss@lists.ubuntu.com>
PackageNamepython3-pyspectral
PackageSectionpython
PackageVersion0.10.0+ds-1
SHA-16360BE7F1423D6E8D9DDCC4228F466C8D3B82019
SHA-256CDE1AD967F6C32FA2A11F150B174E8D812AE262A842DE45BB9B62624B1C31174