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项目描述

Accord.NET provides statistical analysis, machine learning, image processing, and computer vision methods for .NET applications. The Accord.NET Framework extends the popular AForge.NET with new features, adding to a more complete environment for scientific computing in .NET.

系统要求

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Information regarding Project Releases and Project Resources. Note that the information here is a quote from Freecode.com page, and the downloads themselves may not be hosted on OSDN.

2011-04-02 05:53
2.1.6

本新闻稿中介绍了速成式的强大功能(冲浪)探测器从加速段测试,功能(快速)角探测器,有限内存BFGS方法用于非线性优化和阈值的序列,序列分类隐马尔可夫模型排斥反应。
This release introduces the Speeded-Up Robust Features (SURF) detector, Features from Accelerated Segment Test (FAST) corners detector, Limited-memory BFGS method for non-linear optimization, and threshold models for sequence rejection in hidden Markov sequence classifiers.

2011-02-22 00:17
2.1.5

这个版本引入了独立成分分析,一个新的音频架构,以及对重大隐马尔可夫模型命名空间重构的支持。新的音频架构可以使用独立成分分析的音频信号进行盲源分离的组合。的内核已经全面的机器学习应用程序设置也已扩大与高斯,多项式,拉普拉斯,乙状结肠,和Cauchy稀疏内核版本。
This release introduces support for independent component analysis, a new audio architecture, and a major refactoring of the hidden Markov models namespace. The new audio architecture can be used in combination with independent component analysis to perform blind source separation of audio signals. The already comprehensive set of kernels for machine learning applications has also been expanded with sparse versions of the Gaussian, Polynomial, Laplacian, Sigmoid, and Cauchy kernels.

2010-11-04 02:10
2.1.3

大改进了的文件。这个框架现在已经连续密度隐马尔可夫模型,高斯混合物,非负矩阵分解的支持。
Great improvements were made to the documentation. The framework now has support for Continuous density Hidden Markov Models, Gaussian Mixtures, and Non-negative Matrix Factorization.

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