You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
I installed EfficientWord-Net in Python 3.9 environment on windows laptop.
There have been few issues during installation which got resolved as mentioned below (for your information):
======================Installation=======================================================
Installed in venv: (env_p39)
This env was created with Python 3.9 uisng the command:
conda create -n env_p39 python=3.9
To overcome the PyAudio issue when "pip install EfficientWord-Net" is issued,
PyAudio was installed using the following commands:
pip install pipwin
pipwin install pyaudio
import eff_word_net reported a tflite_runtime missing.
This got fixed when following command is issued:
python -m eff_word_net.engine
After installation, the following default wakeword code worked without errors:
Now, I got down to create a custom wakeword 'eye_square'.
Issue1:
I was able to create the reference json file when I used --model-type first_iteration_siamese
The created reference json file is attached below for reference: eye_square_ref.json
But when I was trying to use the same in the code, I run into an error saying model file missing.
`import os
from eff_word_net.streams import SimpleMicStream
from eff_word_net.engine import HotwordDetector
from eff_word_net.audio_processing import First_Iteration_Siamese, ModelRawBackend, Resnet50_Arc_loss
When I try to create the custom wakeword reference json using --model-type resnet_50_arc, i get AssertionError as captured in the screenshot below:
Questions:
Due to the above two issues, I am not able to create custom wakeword and use it on windows laptop. I am hoping that I get some help from you on both these issues and get successful in running the custom wakeword on my windows laptop
I see that the resnet_50_arc may require about ~90 MB RAM. Do you think this I will be able to run these wakewords on Raspberry Pi zero? Alternatively, can we generate customwake word using 'first_iteration_siamese' and be able to run it on the Pi Zero as this model apparently requires less RAM? Please clarify.
Thanks!!
Update:
I could resolve Issue1 with the following edits:
from eff_word_net.audio_processing import First_Iteration_Siamese, ModelRawBackend, Resnet50_Arc_loss
There should not be much issues w.r.t using the 90MB model in a pi zero in standalone, however using it with other code or other model could be problematic. The first_iteration_siamese is light weight like you mentioned but was not very well trained. But if the performance of the same is good enough for you, you can very well proceed with the same.
I have not been updating the repo or maintaining it regularly for last few months which results in all these errors, my plan is to create a new iteration of models with different size variants and create better code for the same as well. Just stay tuned
I will however attempt to replicate and fix these issues
Hi,
I installed EfficientWord-Net in Python 3.9 environment on windows laptop.
There have been few issues during installation which got resolved as mentioned below (for your information):
======================Installation=======================================================
Installed in venv: (env_p39)
This env was created with Python 3.9 uisng the command:
conda create -n env_p39 python=3.9
To overcome the PyAudio issue when "pip install EfficientWord-Net" is issued,
PyAudio was installed using the following commands:
import eff_word_net reported a tflite_runtime missing.
This got fixed when following command is issued:
python -m eff_word_net.engine
====================================================================================
After installation, the following default wakeword code worked without errors:
Now, I got down to create a custom wakeword 'eye_square'.
Issue1:
I was able to create the reference json file when I used --model-type first_iteration_siamese
The created reference json file is attached below for reference:
eye_square_ref.json
But when I was trying to use the same in the code, I run into an error saying model file missing.
`import os
from eff_word_net.streams import SimpleMicStream
from eff_word_net.engine import HotwordDetector
from eff_word_net.audio_processing import First_Iteration_Siamese, ModelRawBackend, Resnet50_Arc_loss
from eff_word_net import samples_loc
#base_model = baseModel()
mycroft_hw = HotwordDetector(
hotword="eye_square",
reference_file=os.path.join(samples_loc, "eye_square_ref.json"),
threshold=0.7,
relaxation_time=2
)
mic_stream = SimpleMicStream(
window_length_secs=1.5,
sliding_window_secs=0.75,
)
mic_stream.start_stream()
print("Say Mycroft ")
while True :
frame = mic_stream.getFrame()
result = mycroft_hw.scoreFrame(frame)
if result==None :
#no voice activity
continue
if(result["match"]):
print("Wakeword uttered",result["confidence"])`
The error I get is :
runfile('C:/Users/rpratapa/Documents/Code Base/SW/audio-similarity-main/audio_similarity/untitled0.py', wdir='C:/Users/rpratapa/Documents/Code Base/SW/audio-similarity-main/audio_similarity')
Traceback (most recent call last):
File ~\anaconda3\envs\env_p39\lib\site-packages\spyder_kernels\py3compat.py:356 in compat_exec
exec(code, globals, locals)
File c:\users\rpratapa\documents\code base\sw\audio-similarity-main\audio_similarity\untitled0.py:18
mycroft_hw = HotwordDetector(
TypeError: init() missing 1 required positional argument: 'model'
Issue 2:
When I try to create the custom wakeword reference json using --model-type resnet_50_arc, i get AssertionError as captured in the screenshot below:
Questions:
Thanks!!
Update:
I could resolve Issue1 with the following edits:
from eff_word_net.audio_processing import First_Iteration_Siamese, ModelRawBackend, Resnet50_Arc_loss
base_model = First_Iteration_Siamese()
print('cwd: ', os.getcwd())
mycroft_hw = HotwordDetector(
hotword="eye-square",
model = base_model,
reference_file=os.path.join(samples_loc, "eye-square_ref.json"),
threshold=0.7,
relaxation_time=2
)
Issue2 & Question2 remain to be addressed.
The text was updated successfully, but these errors were encountered: