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import gradio as gr
import numpy as np
import os
from hugsvision.inference.TorchVisionClassifierInference import TorchVisionClassifierInference
models_name = [
"VGG16",
"ShuffleNetV2",
"mobilenet_v2"
]
colname = "mobilenet_v2"
radio = gr.inputs.Radio(models_name, default="mobilenet_v2", type="value", label=colname)
print(radio.label)
def predict_image(image):
image = np.array(image) / 255
image = np.expand_dims(image, axis=0)
classifier = TorchVisionClassifierInference(
model_path = "./models/" + colname + ".pth",
)
pred = classifier.predict(img=image)
return pred
# open categories.txt in read mode
categories = open("categories.txt", "r")
labels = categories.readline().split(";")
image = gr.inputs.Image(shape=(300, 300), label="Upload Your Image Here")
label = gr.outputs.Label(num_top_classes=len(labels))
samples = ['./samples/basking.jpg', './samples/blacktip.jpg']
# , './samples/blacktip.jpg', './samples/blue.jpg', './samples/bull.jpg', './samples/hammerhead.jpg',
# './samples/lemon.jpg', './samples/mako.jpg', './samples/nurse.jpg', './samples/sand tiger.jpg', './samples/thresher.jpg',
# './samples/tigre.jpg', './samples/whale.jpg', './samples/white.jpg', './samples/whitetip.jpg']
interface = gr.Interface(
fn=predict_image,
inputs=[image, radio],
outputs=label,
capture_session=True,
allow_flagging=False,
examples=samples
)
interface.launch()