dbo:abstract |
Source separation, blind signal separation (BSS) or blind source separation, is the separation of a set of source signals from a set of mixed signals, without the aid of information (or with very little information) about the source signals or the mixing process. It is most commonly applied in digital signal processing and involves the analysis of mixtures of signals; the objective is to recover the original component signals from a mixture signal. The classical example of a source separation problem is the cocktail party problem, where a number of people are talking simultaneously in a room (for example, at a cocktail party), and a listener is trying to follow one of the discussions. The human brain can handle this sort of auditory source separation problem, but it is a difficult problem in digital signal processing. This problem is in general highly underdetermined, but useful solutions can be derived under a surprising variety of conditions. Much of the early literature in this field focuses on the separation of temporal signals such as audio. However, blind signal separation is now routinely performed on multidimensional data, such as images and tensors, which may involve no time dimension whatsoever. Several approaches have been proposed for the solution of this problem but development is currently still very much in progress. Some of the more successful approaches are principal components analysis and independent component analysis, which work well when there are no delays or echoes present; that is, the problem is simplified a great deal. The field of computational auditory scene analysis attempts to achieve auditory source separation using an approach that is based on human hearing. The human brain must also solve this problem in real time. In human perception this ability is commonly referred to as auditory scene analysis or the cocktail party effect. (en) |
dbo:thumbnail |
wiki-commons:Special:FilePath/Polyphonic_note_separation_&_manipulation.jpg?width=300 |
dbo:wikiPageExternalLink |
http://shogun-toolbox.org/ http://www.volker-koch.com/diss/ https://www.python.org/ http://www.cis.hut.fi/projects/ica/ http://apps.dtic.mil/dtic/tr/fulltext/u2/a455940.pdf https://web.archive.org/web/20061128090454/http:/visl.technion.ac.il/demos/bss/ |
dbo:wikiPageID |
28804 (xsd:integer) |
dbo:wikiPageInterLanguageLink |
dbpedia-de:Cocktail-Party-Effekt |
dbo:wikiPageLength |
10178 (xsd:nonNegativeInteger) |
dbo:wikiPageRevisionID |
1121170449 (xsd:integer) |
dbo:wikiPageWikiLink |
dbr:Electromagnetic_field dbr:Non-negative_matrix_factorization dbr:Nonnegative_matrix_factorization dbr:Basis_(linear_algebra) dbc:Speech_processing dbr:Deconvolution dbr:Dependent_component_analysis dbr:Independent_component_analysis dbr:Correlation dbr:Medical_imaging dbr:Colin_Cherry dbr:Electroencephalogram dbr:Music dbr:Underdetermined_system dbr:Magnetic_field dbr:Signal_processing dbr:Singular_value_decomposition dbr:Common_spatial_pattern dbr:Computational_auditory_scene_analysis dbr:Celemony_Software dbr:Joint_Approximation_Diagonalization_of_Eigen-matrices dbr:Stationary_subspace_analysis dbc:Digital_signal_processing dbr:Digital_image dbr:Cocktail_party_problem dbr:Magnetoencephalography dbr:Tensors dbr:Cocktail_party dbr:Cocktail_party_effect dbr:Digital_signal_processing dbr:Auditory_scene_analysis dbr:Information_theory dbr:Speech_segmentation dbr:Factorial_code dbr:Sonic_artifact dbr:Principal_components_analysis dbr:Independence_(probability) dbr:Independent_components_analysis dbr:Signal_(information_theory) dbr:Adaptive_filtering dbr:Infomax_principle dbr:Segmentation_(image_processing) dbr:Sparsity dbr:Multidimensional_data dbr:File:Polyphonic_note_separation_&_manipulation.jpg dbr:File:BSS-example.png dbr:File:BSS-flow-chart.png dbr:Low-complexity_coding_and_decoding |
dbp:wikiPageUsesTemplate |
dbt:Authority_control dbt:Commons_category dbt:Other_uses dbt:Reflist dbt:See_also dbt:Short_description dbt:TOC_right |
dct:subject |
dbc:Speech_processing dbc:Digital_signal_processing |
rdf:type |
owl:Thing |
rdfs:comment |
Source separation, blind signal separation (BSS) or blind source separation, is the separation of a set of source signals from a set of mixed signals, without the aid of information (or with very little information) about the source signals or the mixing process. It is most commonly applied in digital signal processing and involves the analysis of mixtures of signals; the objective is to recover the original component signals from a mixture signal. The classical example of a source separation problem is the cocktail party problem, where a number of people are talking simultaneously in a room (for example, at a cocktail party), and a listener is trying to follow one of the discussions. The human brain can handle this sort of auditory source separation problem, but it is a difficult problem (en) |
rdfs:label |
Signal separation (en) |
rdfs:seeAlso |
dbr:Cocktail_party_effect |
owl:sameAs |
wikidata:Signal separation dbpedia-et:Signal separation https://global.dbpedia.org/id/fYyV |
prov:wasDerivedFrom |
wikipedia-en:Signal_separation?oldid=1121170449&ns=0 |
foaf:depiction |
wiki-commons:Special:FilePath/BSS-example.png wiki-commons:Special:FilePath/BSS-flow-chart.png wiki-commons:Special:FilePath/Polyphonic_note_separation_&_manipulation.jpg |
foaf:isPrimaryTopicOf |
wikipedia-en:Signal_separation |
is dbo:wikiPageRedirects of |
dbr:Blind_source_separation dbr:Blind_signal_separation dbr:Self-modeling_mixture_analysis dbr:Multivariate_Curve_Resolution dbr:Multivariate_curve_resolution |
is dbo:wikiPageWikiLink of |
dbr:Empirical_orthogonal_functions dbr:Blind_source_separation dbr:Source_separation dbr:Daniel_Levitin dbr:Real-time_analyzer dbr:Blind_signal_separation dbr:Auditory_scene_analysis dbr:Shoko_Araki dbr:Self-modeling_mixture_analysis dbr:Multivariate_Curve_Resolution dbr:Multivariate_curve_resolution |
is foaf:primaryTopic of |
wikipedia-en:Signal_separation |