An NVDA add-on to split screen reader and audio from other programs to different sound channels

Overview

Sound Splitter

  • Authors: Joseph Lee and contributors
  • NVDA compatibility: 2019.3 and later

This add-on, partly based on Tony's Enhancements by Tony Malykh, adds the ability to split audio from NVDA and other sounds onto separate audio channels.

Commands:

  • Alt+NvDA+S: toggle sound splitter. If enabled, NVDA will be heard through the right channel.

Sound S;litter settings

You can configure add-on settings from NVDA menu/Preferences/Settings/Sound Splitter catregory.

  • Split NVDA sound and applications' sounds into left and right channels: checkinb this checkbox will enable sound splitting feature.
  • Switch left and right during sound split: by default, NVDA will be heard through the right channel if sound splitting is on. You can instead hear NVDA through the left channel by checking this checkbox.
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Comments
  • Endless splitting

    Endless splitting

    I started using this addon 2 days back, and found it very nice! But I started noticing that even after closing NVDA the audio of the each app, except NVDA still splitted and I nedd to turn on and off the splitter to audio get back for both channels, for each app eg. Whatsapp, Chrome and on.... I noticed it was an bug until version 22.2 but Im using the version 22.03.01. NVDA version: 2021.3.5 Windows: 21H2 (SO compilation 22000.556) ©

    opened by felanfranchi 2
Releases(23.01)
Owner
Joseph Lee
Joseph Lee
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