license_plate / app.py
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Create app.py
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import streamlit as st
import degirum as dg
from PIL import Image
zoo=dg.connect(dg.CLOUD,zoo_url='https://cs.degirum.com/degirum/ultralytics_v6',token=st.secrets["DG_TOKEN"])
st.title('DeGirum Cloud Platform Demo')
st.header('Specify Model Options Below')
runtime_agent_device=st.radio("Choose runtime agent device combo",("TFLite-EdgeTPU","N2X-ORCA","N2X-ORCA1","OpenVINO-CPU"),index=2)
runtime_agent,device=runtime_agent_device.split('-')[0],runtime_agent_device.split('-')[1]
model_options=zoo.list_models(device=device,runtime=runtime_agent)
st.header('Choose and Run a Model')
st.text('Select a model and upload an image. Then click on the submit button')
with st.form("model_form"):
model_name=st.selectbox("Choose a Model from the list", model_options)
uploaded_file=st.file_uploader('input image')
submitted = st.form_submit_button("Submit")
if submitted:
model=zoo.load_model(model_name)
model.overlay_font_scale=3
model.overlay_line_width=6
model.image_backend='pil'
if model.output_postprocess_type=='PoseDetection':
model.overlay_show_labels=False
st.write("Model loaded successfully")
image = Image.open(uploaded_file)
predictions=model(image)
if model.output_postprocess_type=='Classification' or model.output_postprocess_type=='DetectionYoloPlates':
st.image(predictions.image,caption='Original Image')
st.write(predictions.results)
else:
st.image(predictions.image_overlay,caption='Image with Bounding Boxes/Keypoints')