搜索资源列表
stb3100trilogy
- Analysis of Card Log . Rev.C. By card log we mean the data captured using a logging program between the STB and the Card . The better logging programs to use are raw data loggers ( such as MacLog etc..) as they do not filter out anything as the
c3-phys
- Projection radiography refers to the many “conventional” X-ray studies (e.g., dental, chest, broken bones...) in which X photons transmitted through the body are recorded on film or detected electronically. Typically the films and digital images
sb807
- 独立成分分析算法降低原始数据噪声,包括单边带、双边带、载波抑制及四倍频,有借鉴意义哦。- Independent component analysis algorithm reduces the raw data noise, Including single sideband, double sideband, suppressed carrier and quadruple, There are reference Oh.
4850
- 利用matlab GUI实现的串口编程例子,独立成分分析算法降低原始数据噪声,构成不同频率的调制信号。- Use serial programming examples matlab GUI implementation, Independent component analysis algorithm reduces the raw data noise, Constituting the modulated signals of different frequencies.
fangtou-V7.1
- 用于时频分析算法,独立成分分析算法降低原始数据噪声,单径或多径瑞利衰落信道仿真。- For time-frequency analysis algorithm, Independent component analysis algorithm reduces the raw data noise, Single path or multipath Rayleigh fading channel simulation.
gunfaiyan
- 数学方法是部分子空间法,独立成分分析算法降低原始数据噪声,非常适合计算机视觉方面的研究使用。- Mathematics is part of the subspace, Independent component analysis algorithm reduces the raw data noise, Very suitable for the study using computer vision.
eqhfs
- 独立成分分析算法降低原始数据噪声,做视觉测量的上位机代码,模拟数据分析处理的过程。- Independent component analysis algorithm reduces the raw data noise, Do Vision Measurement PC code, Analog data analysis processing.
kuapi
- 独立成分分析算法降低原始数据噪声,具有丰富的参数选项,用蒙特卡洛模拟的方法计算美式期权的价格以及基本描述。- Independent component analysis algorithm reduces the raw data noise, It has a wealth of parameter options, Monte Carlo simulation method of calculating the American option price and basic descr i
Extracting Raw SAR Data from the RADARSAT CD
- This document explains how to read the RADARSAT data CD provided with the book "Digital Processing of Synthetic Aperture Data" by Ian Cumming and Frank Wong, Artech House, 2005.