import os import sys # set CUDA_HOME os.environ["CUDA_HOME"] = "/usr/local/cuda-12.3/" import gradio as gr from tqdm import tqdm import cv2 import os import numpy as np import pandas as pd import torch from typing import Tuple from PIL import Image from owl_core import owl_full_video def run_owl(input_vid, text_prompt, confidence_threshold, fps_processed, scaling_factor ): new_input_vid = input_vid.replace(" ", "_") os.rename(input_vid, new_input_vid) csv_path, vid_path = owl_full_video(input_vid, text_prompt, confidence_threshold, fps_processed=fps_processed, scaling_factor=scaling_factor) global CSV_PATH CSV_PATH = csv_path global VID_PATH VID_PATH = vid_path return vid_path def vid_download(): """ """ print(CSV_PATH, VID_PATH) return [CSV_PATH, VID_PATH] with gr.Blocks() as demo: gr.HTML( """

🦍 Primate Detection

""" ) with gr.Row(): with gr.Column(): input = gr.Video(label="Input Video", interactive=True) text_prompt = gr.Textbox(label="What do you want to detect? (Multiple species should be separated by commas") with gr.Accordion("Advanced Options", open=False): conf_threshold = gr.Slider( label="Confidence Threshold", info="Adjust the threshold to change the sensitivity of the model, lower thresholds being more sensitive.", minimum=0.0, maximum=1.0, value=0.3, step=0.05 ) fps_processed = gr.Slider( label="Frame Detection Rate", info="Adjust the frame detection rate. I.e. a value of 120 will run detection every 120 frames, a value of 1 will run detection on every frame. Note: the lower the number the slower the processing time.", minimum=1, maximum=120, value=30, step=1) scaling_factor = gr.Slider( label="Downsample Factor", info="Adjust the downsample factor. Note: the higher the number the faster the processing time but lower the accuracy.", minimum=1, maximum=5, value=2, step=1 ) # TODO: Make button visible only after a file has been uploaded run_btn = gr.Button(value="Run Detection", visible=True) with gr.Column(): vid = gr.Video(label="Output Video", height=350, interactive=False, visible=True) # download_btn = gr.Button(value="Generate Download", visible=True) download_file = gr.Files(label="CSV, Video Output", interactive=False) run_btn.click(fn=run_owl, inputs=[input, text_prompt, conf_threshold, fps_processed, scaling_factor, ], outputs=[vid]) vid.change(fn=vid_download, outputs=download_file) # gr.Examples( # [["baboon_15s.mp4", "baboon", 0.25, 0.25, 1, 1]], # inputs = [input, text_prompt, conf_threshold, fps_processed, scaling_factor], # outputs = [vid], # fn=run_sam_dino, # cache_examples=True, # label='Example' # ) gr.DuplicateButton() gr.Markdown( """ ## Frequently Asked Questions ##### How can I run the interface on my own computer? By clicking on the three dots on the top right corner of the interface, you will be able to clone the repository or run it with a Docker image on your local machine. \ For local machine setup instructions please check the README file. ##### The video is very slow to process, how can I speed it up? You can speed up the processing by adjusting the frame detection rate in the advanced options. The lower the number the slower the processing time. Choosing only\ bounding boxes will make the processing faster. You can also duplicate the space using the Duplicate Button and choose a different GPU which will make the processing faster. """ ) demo.launch(share=False)