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1.
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XL FEST
Serial Number |
98665691 |
Status |
Registered |
Filing Date |
2024-07-25 |
Registration Date |
2025-04-22 |
Owner |
THE CYPHER, LLC ()
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NICE Classes ? |
41 - Education, entertainment, sporting and cultural services
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Goods & Services
Entertainment services, namely, planning and conducting a series of film festivals and storytelling festivals
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2.
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BLACK HARVEST FILM FESTIVAL
Serial Number |
97865248 |
Status |
Registered |
Filing Date |
2023-03-30 |
Registration Date |
2024-06-11 |
Owner |
THE CYPHER, LLC ()
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NICE Classes ? |
41 - Education, entertainment, sporting and cultural services
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Goods & Services
Entertainment services, namely, planning and conducting a series of film festivals
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3.
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CREATIVE CYPHER C
Serial Number |
87811449 |
Status |
Registered |
Filing Date |
2018-02-26 |
Registration Date |
2018-11-06 |
Owner |
THE CYPHER LLC ()
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NICE Classes ? |
41 - Education, entertainment, sporting and cultural services
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Goods & Services
Entertainment services, namely, multimedia production services; Entertainment services in the nature of the creation, development, production, editing, and distribution of audio visual content, namely, television shows, films, videos, motion pictures and shorts; presenting live music concerts; Entertainment services, namely, screening audio-visual content in the nature of short or feature film showings; conducting seminars in the field of art, film and music and entertainment exhibitions for cultural or entertainment purposes in the nature of film festivals, theatrical events, and music festivals; providing information in the field of film, art and music by means of a collaborative incubator; providing a website featuring non-downloadable videos in the nature of movie clips, musical performances, music videos and other multimedia materials in the field of art, film and music; audio-visual content production consulting services; Entertainment services, namely, screenplay development services
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4.
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CREATIVE CYPHER
Serial Number |
87287863 |
Status |
Registered |
Filing Date |
2017-01-03 |
Registration Date |
2017-10-24 |
Owner |
THE CYPHER LLC ()
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NICE Classes ? |
41 - Education, entertainment, sporting and cultural services
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Goods & Services
Entertainment services, namely, multimedia production services; Entertainment services in the nature of the creation, development, production, editing, and distribution of audio visual content such as television shows, films, videos, motion pictures and shorts; presenting live music concerts; Entertainment services, namely, screening audio-visual content; conducting seminars in the field of art, film and music and entertainment exhibitions for cultural or entertainment purposes in the nature of film festivals, theatrical events, and music festivals; providing information in the field of film, art and music by means of a collaborative incubator; providing a website featuring non-downloadable videos in the nature of movie clips, musical performances, music videos and other multimedia materials in the field of art, film and music; audio-visual content production consulting services; Entertainment services, namely, screenplay development services
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5.
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NEURAL NETWORK VOICE ACTIVITY DETECTION EMPLOYING RUNNING RANGE NORMALIZATION
Application Number |
US2015052519 |
Publication Number |
2016/049611 |
Status |
In Force |
Filing Date |
2015-09-26 |
Publication Date |
2016-03-31 |
Owner |
CYPHER, LLC (USA)
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Inventor |
Vickers, Earl
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Abstract
A "running range normalization" method includes computing running estimates of the range of values of features useful for voice activity detection (VAD) and normalizing the features by mapping them to a desired range. Running range normalization includes computation of running estimates of the minimum and maximum values of VAD features and normalizing the feature values by mapping the original range to a desired range. Smoothing coefficients are optionally selected to directionally bias a rate of change of at least one of the running estimates of the minimum and maximum values. The normalized VAD feature parameters are used to train a machine learning algorithm to detect voice activity and to use the trained machine learning algorithm to isolate or enhance the speech component of the audio data.
IPC Classes ?
- G10L 15/16 - Speech classification or search using artificial neural networks
- G10L 25/27 - Speech or voice analysis techniques not restricted to a single one of groups characterised by the analysis technique
- G10L 25/78 - Detection of presence or absence of voice signals
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6.
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MULTI-AURAL MMSE ANALYSIS TECHNIQUES FOR CLARIFYING AUDIO SIGNALS
Application Number |
US2015035612 |
Publication Number |
2015/195482 |
Status |
In Force |
Filing Date |
2015-06-12 |
Publication Date |
2015-12-23 |
Owner |
CYPHER, LLC (USA)
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Inventor |
- Geiger, Fredrick
- Bunderson, Bryant
- Grundstrom, Carl
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Abstract
Techniques for processing audio signals include removing noise from the audio signals or otherwise clarifying the audio signals prior to outputting the audio signals. The disclosed techniques may employ minimum mean squared error (MMSE) analyses on audio signals received from a primary microphone and at least one reference microphone, and to techniques in which the MMSE analyses are used to reduce or eliminate noise from audio signals received by the primary microphone. Optionally, confidence intervals may be assigned to different frequency bands of an audio signal, with each confidence interval corresponding to a likelihood that its respective frequency band includes targeted audio, and each confidence interval representing a contribution of its respective frequency band in a reconstructed audio signal from which noise has been removed.
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7.
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SYSTEM FOR AUTONONOUS DETECTION AND SEPARATION OF COMMON ELEMENTS WITHIN DATA, AND METHODS AND DEVICES ASSOCIATED THEREWITH
Application Number |
US2012027638 |
Publication Number |
2012/119140 |
Status |
In Force |
Filing Date |
2012-03-03 |
Publication Date |
2012-09-07 |
Owner |
CYPHER, LLC (USA)
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Inventor |
Edwards, Tyson, Lavar
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Abstract
A data interpretation and separation system for identifying data elements within a data set that have common features, and separating those data elements from other data elements not sharing such common features. Commonalities relative to methods and/or rates of change within a data set may be used to determine which elements share common features. Determining the commonalities may be performed autonomously by referencing data elements within the data set, and need not be matched against algorithmic or predetermined definitions. Interpreted and separated data may be used to reconstruct an output that includes only separated data. Such reconstruction may be non-destructive. Interpreted and separated data may also be used to retroactively build on existing element sets associated with a particular source.
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