from detecto import core, utils, visualize from detecto.visualize import show_labeled_image, plot_prediction_grid from torchvision import transforms import matplotlib.pyplot as plt from tensorflow.keras.utils import img_to_array import numpy as np import warnings import streamlit as st warnings.filterwarnings("ignore", category=UserWarning) MODEL_PATH = "SD_model_weights.pth" IMAGE_PATH = "img1.jpeg" model = core.Model.load(MODEL_PATH, ['cross_arm','pole','tag']) #warnings.warn(msg) st.title("Object Detection") image = utils.read_image(IMAGE_PATH) predictions = model.predict(image) labels, boxes, scores = predictions images = ["img1.jpeg","img2.jpeg","img3.jpeg","img3.jpeg"] with st.sidebar: st.write("choose an image") st.image(images) #def detect_object(IMAGE_PATH): # image = utils.read_image(IMAGE_PATH) # predictions = model.predict(image) # labels, boxes, scores = predictions #thresh=0.2 #filtered_indices=np.where(scores>thresh) #filtered_scores=scores[filtered_indices] #filtered_boxes=boxes[filtered_indices] #num_list = filtered_indices[0].tolist() #filtered_labels = [labels[i] for i in num_list] #visualize.show_labeled_image(image, filtered_boxes, filtered_labels) #img_array = img_to_array(img)