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import gradio as gr
import torch
from Utilities.model import YOLOv3
from Utilities import config
from Utilities.transforms import resize_transforms
from Utilities.runtime_utils import generate_gradcam_output, plot_bboxes
model = YOLOv3.load_from_checkpoint(
config.MODEL_CHECKPOINT_PATH,
map_location=torch.device('cpu')
)
examples = [
[config.EXAMPLE_IMAGE_PATH + "cat.jpeg", 1],
[config.EXAMPLE_IMG_PATH + "horse.jpg", 1],
[config.EXAMPLE_IMG_PATH + "000018.jpg", 2],
[config.EXAMPLE_IMG_PATH + "bird.webp", 2],
[config.EXAMPLE_IMG_PATH + "000022.jpg", 2],
[config.EXAMPLE_IMG_PATH + "airplane.png", 0],
[config.EXAMPLE_IMG_PATH + "shipp.jpg", 0],
[config.EXAMPLE_IMG_PATH + "car.jpg", 1],
[config.EXAMPLE_IMG_PATH + "000007.jpg", 1],
[config.EXAMPLE_IMG_PATH + "000013.jpg", 2],
[config.EXAMPLE_IMG_PATH + "000012.jpg", 2],
[config.EXAMPLE_IMG_PATH + "000006.jpg", 1],
[config.EXAMPLE_IMG_PATH + "000004.jpg", 1],
[config.EXAMPLE_IMG_PATH + "000014.jpg", 0],
]
title = "Building YOLOv3 from Scratch using PyTorch Lightning"
description = """Unveiling the intricacies of YOLOv3 through PyTorch Lightning βš‘οΈπŸ•΅οΈβ€β™‚οΈ
---
In the rapidly evolving landscape of machine learning, expertise in building sophisticated models from scratch is invaluable. Presenting the YOLOv3 Object Detection System crafted meticulously using the cutting-edge PyTorch Lightning framework.
πŸŽ‰ Key Highlights:
---
1. **Deep Dive into YOLOv3**: Ground-up development of the YOLOv3 model, showcasing proficiency in intricate model architectures and in-depth understanding of computer vision principles.
2. **PyTorch Lightning Advantage**: Leverage the robustness and efficiency of PyTorch Lightning, reflecting modern best practices and optimizing training workflows. This demonstrates strong proficiency in state-of-the-art deep learning frameworks.
3. **High Precision with GradCAM**: Integrated GradCAM (Gradient-weighted Class Activation Mapping), offering insights into model's decision-making layers, indicative of a holistic approach to model transparency and interpretability.
4. **Flexibility in Object Detection**: Multi-scale outputs (13x13, 26x26, 52x52) for versatile object detection, displaying an understanding of varying image resolutions and their impact on detection tasks.
πŸ“Έ Workflow:
---
- Upload an image for object detection.
- Choose an appropriate output stream size.
- Experience real-time object identification, enriched with GradCAM visualizations, highlighting the model's decision-making areas.
βœ… Recognizable Pascal VOC Classes:
---
aeroplane, bicycle, bird, boat, bottle, bus, car, cat, chair, cow, diningtable, dog, horse, motorbike, person, pottedplant, sheep, sofa, train, tvmonitor
🌟 Dive Deeper:
---
Explore the "Examples" section for comprehensive visual insights. Understand the YOLOv3's capabilities and analyze GradCAM results for varied output streams. This emphasizes a keen interest in not just creating, but also in understanding and optimizing machine learning models.
Venture into a hands-on demonstration of skills, innovation, and expertise in computer vision and deep learning. Dive into this YOLOv3 Object Detection System, exemplifying the forefront of machine learning prowess.
"""
def generate_gradio_output(input_img, gradcam_output_stream=0):
input_img = resize_transforms(image=input_img)["image"]
fig, processed_img = plot_bboxes(
input_img=input_img,
model=model,
thresh=0.6,
iou_thresh=0.5,
anchors=model.scaled_anchors,
)
visualization = generate_gradcam_output(
org_img=input_img,
model=model,
input_img=processed_img,
gradcam_output_stream=gradcam_output_stream,
)
return fig, visualization
gr.Interface(
fn=generate_gradio_output,
inputs=[
gr.Image(label="Input Image"),
gr.Slider(0, 2, step=1, label="GradCAM Output Stream (13, 26, 52)")
],
outputs=[
gr.Plot(
visible=True,
label="Bounding Box Predictions",
),
gr.Image(label="GradCAM Visualization").style(width=416, height=416)
],
examples=examples,
title=title,
description=description,
).launch()