20 stable releases (3 major)
3.0.4 | Sep 4, 2024 |
---|---|
3.0.3 | Jan 31, 2024 |
3.0.2 | Nov 16, 2023 |
2.2.1 | Jun 7, 2023 |
0.0.1 | Aug 12, 2021 |
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Picovoice SDK for Rust
Picovoice
Made in Vancouver, Canada by Picovoice
Picovoice is an end-to-end platform for building voice products on your terms. It enables creating voice experiences similar to Alexa and Google. But it entirely runs 100% on-device. Picovoice is
- Private: Everything is processed offline. Intrinsically HIPAA and GDPR-compliant.
- Reliable: Runs without needing constant connectivity.
- Zero Latency: Edge-first architecture eliminates unpredictable network delay.
- Accurate: Resilient to noise and reverberation. It outperforms cloud-based alternatives by wide margins *.
- Cross-Platform: Design once, deploy anywhere. Build using familiar languages and frameworks.
Compatibility
- Rust 1.54+
- Runs on Linux (x86_64), macOS (x86_64, arm64), Windows (x86_64), Raspberry Pi
Installation
First you will need Rust and Cargo installed on your system.
To add the picovoice library into your app, add picovoice
to your app's Cargo.toml
manifest:
[dependencies]
picovoice = "*"
AccessKey
Picovoice requires a valid Picovoice AccessKey
at initialization. AccessKey
acts as your credentials when using Picovoice SDKs.
You can get your AccessKey
for free. Make sure to keep your AccessKey
secret.
Signup or Login to Picovoice Console to get your AccessKey
.
Usage
To create an instance of the engine with default parameters, use the PicovoiceBuilder
function.
You must provide a Porcupine keyword file, a wake word detection callback function, a Rhino context file and an inference callback function.
You must then make a call to init()
:
use picovoice::{rhino::RhinoInference, PicovoiceBuilder};
let access_key = "${ACCESS_KEY}"; // AccessKey obtained from Picovoice Console (https://console.picovoice.ai/)
let wake_word_callback = || {
// let user know wake word detected
};
let inference_callback = |inference: RhinoInference| {
if inference.is_understood {
let intent = inference.intent.unwrap();
let slots = inference.slots;
// add code to take action based on inferred intent and slot values
} else {
// add code to handle unsupported commands
}
};
let mut picovoice = PicovoiceBuilder::new(
access_key,
keyword_path,
wake_word_callback,
context_path,
inference_callback,
).init().expect("Failed to create picovoice");
Upon detection of wake word defined by keyword_path
it starts inferring user's intent
from the follow-on voice command within the context defined by the file located at context_path
.
keyword_path
is the absolute path to Porcupine wake word engine keyword file (with .ppn
suffix).
context_path
is the absolute path to Rhino Speech-to-Intent engine context file (with .rhn
suffix).
wake_word_callback
is invoked upon the detection of wake phrase and
inference_callback
is invoked upon completion of follow-on voice command inference.
When instantiated, valid sample rate can be obtained via sample_rate()
.
Expected number of audio samples per frame is frame_length()
.
The engine accepts 16-bit linearly-encoded PCM and operates on single-channel audio.
fn next_audio_frame() -> Vec<i16> {
// get audio frame
}
loop {
picovoice.process(&next_audio_frame()).expect("Picovoice failed to process audio");
}
The sensitivity of the Porcupine (wake word) and Rhino (inference) engines can be tuned
using the porcupine_sensitivity()
and rhino_sensitivity()
methods respectively.
They are floating point numbers within [0, 1].
A higher sensitivity value results in fewer misses at the cost of (potentially) increasing the erroneous inference rate:
let access_key = "${ACCESS_KEY}"; // AccessKey obtained from Picovoice Console (https://console.picovoice.ai/)
let mut picovoice = PicovoiceBuilder::new(
access_key,
keyword_path,
wake_word_callback,
context_path,
inference_callback,
)
.porcupine_sensitivity(0.4f32)
.rhino_sensitivity(0.77f32)
.init().expect("Failed to create picovoice");
Non-standard model and library paths (For example, when using a non-english model) for both engines can be tuned in a similar manner:
let access_key = "${ACCESS_KEY}"; // AccessKey obtained from Picovoice Console (https://console.picovoice.ai/)
let mut picovoice = PicovoiceBuilder::new(
access_key,
keyword_path,
wake_word_callback,
context_path,
inference_callback,
)
.porcupine_sensitivity(0.4f32)
.rhino_sensitivity(0.77f32)
.porcupine_model_path("path/to/model/params.pv")
.rhino_model_path("path/to/model/params.pv")
.porcupine_library_path("path/to/library.so")
.rhino_library_path("path/to/library.so")
.init().expect("Failed to create picovoice");
Non-English Models
In order to detect wake words and run inference in other languages you need to use the corresponding model file. The model files for all supported languages are available here and here.
Demos
Check out the Picovoice Rust demos here
Dependencies
~6–10MB