Nvidia corporation (20240311080). DYNAMICALLY PREVENTING AUDIO ARTIFACTS simplified abstract

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DYNAMICALLY PREVENTING AUDIO ARTIFACTS

Organization Name

nvidia corporation

Inventor(s)

Utkarsh Vaidya of Santa Clara CA (US)

Sumit Bhattacharya of Santa Clara CA (US)

DYNAMICALLY PREVENTING AUDIO ARTIFACTS - A simplified explanation of the abstract

This abstract first appeared for US patent application 20240311080 titled 'DYNAMICALLY PREVENTING AUDIO ARTIFACTS

The disclosure pertains to a process that can predict and prevent audio artifacts from occurring by monitoring systems, processes, and execution threads on a larger system/device using learning algorithms such as deep neural networks (DNNs).

  • The process generates predictions of potential audio artifacts and recommends system adjustments to prevent them.
  • Recommendations may include changes to processing system frequency, memory frequency, and audio buffer size.
  • System adjustments can be reversed fully or in steps after the audio artifact has been prevented.

Potential Applications: - Audio processing systems in mobile devices - In-vehicle entertainment systems - Gaming consoles

Problems Solved: - Preventing audio glitches and artifacts - Improving overall audio quality in electronic devices

Benefits: - Enhanced user experience with high-quality audio output - Increased reliability of audio systems - Reduction in customer complaints related to audio issues

Commercial Applications: Title: Predictive Audio Artifact Prevention Technology This technology can be utilized in the development of mobile devices, in-vehicle entertainment systems, and gaming consoles to ensure high-quality audio output and prevent audio glitches, enhancing the overall user experience and reducing customer complaints.

Questions about Predictive Audio Artifact Prevention Technology: 1. How does the use of deep neural networks improve the prediction and prevention of audio artifacts? 2. What are the potential cost savings for manufacturers by implementing this technology in their devices?

Frequently Updated Research: Stay updated on the latest advancements in deep neural network algorithms for audio artifact prediction and prevention to enhance the effectiveness of this technology.


Original Abstract Submitted

the disclosure is directed to a process that can predict and prevent an audio artifact from occurring. the process can monitor the systems, processes, and execution threads on a larger system/device, such as a mobile or in-vehicle device. using a learning algorithm, such as deep neural network (dnn), the information collected can generate a prediction of whether an audio artifact is likely to occur. the process can use a second learning algorithm, which also can be a dnn, to generate recommended system adjustments that can attempt to prevent the audio glitch from occurring. the recommendations can be for various systems and components on the device, such as changing the processing system frequency, the memory frequency, and the audio buffer size. after the audio artifact has been prevented, the system adjustments can be reversed fully or in steps to return the system to its state prior to the system adjustments.