import jax import flax import matplotlib.pyplot as plt import nmslib import numpy as np import os import streamlit as st from tempfile import NamedTemporaryFile from torchvision.transforms import Compose, Resize, ToPILImage from transformers import CLIPProcessor, FlaxCLIPModel from PIL import Image import utils BASELINE_MODEL = "openai/clip-vit-base-patch32" # MODEL_PATH = "/home/shared/models/clip-rsicd/bs128x8-lr5e-6-adam/ckpt-1" MODEL_PATH = "flax-community/clip-rsicd-v2" # IMAGE_VECTOR_FILE = "/home/shared/data/vectors/test-baseline.tsv" # IMAGE_VECTOR_FILE = "/home/shared/data/vectors/test-bs128x8-lr5e-6-adam-ckpt-1.tsv" IMAGE_VECTOR_FILE = "./vectors/test-bs128x8-lr5e-6-adam-ckpt-1.tsv" # IMAGES_DIR = "/home/shared/data/rsicd_images" IMAGES_DIR = "./images" DEMO_IMAGES_DIR = "./demo-images" def split_image(X): num_rows = X.shape[0] // 224 num_cols = X.shape[1] // 224 Xc = X[0 : num_rows * 224, 0 : num_cols * 224, :] patches = [] for j in range(num_rows): for i in range(num_cols): patches.append(Xc[j * 224 : (j + 1) * 224, i * 224 : (i + 1) * 224, :]) return num_rows, num_cols, patches def get_patch_probabilities(patches, searched_feature, image_preprocesor, model, processor): images = [image_preprocesor(patch) for patch in patches] text = "An aerial image of {:s}".format(searched_feature) inputs = processor(images=images, text=text, return_tensors="jax", padding=True) outputs = model(**inputs) probs = jax.nn.softmax(outputs.logits_per_text, axis=-1) probs_np = np.asarray(probs)[0] return probs_np def get_image_ranks(probs): temp = np.argsort(-probs) ranks = np.empty_like(temp) ranks[temp] = np.arange(len(probs)) return ranks def app(): model, processor = utils.load_model(MODEL_PATH, BASELINE_MODEL) st.title("Find Features in Images") st.markdown(""" The CLIP model from OpenAI is trained in a self-supervised manner using contrastive learning to project images and caption text onto a common embedding space. We have fine-tuned the model (see [Model card](https://huggingface.co/flax-community/clip-rsicd-v2)) using the RSICD dataset (10k images and ~50k captions from the remote sensing domain). Click here for [more information about our project](https://github.com/arampacha/CLIP-rsicd). This demo shows the ability of the model to find specific features (specified as text queries) in the image. As an example, say you wish to find the parts of the following image that contain a `beach`, `houses`, or `ships`. We partition the image into tiles of (224, 224) and report how likely each of them are to contain each text features. """) st.image("demo-images/st_tropez_1.png") st.image("demo-images/st_tropez_2.png") st.markdown(""" For this image and the queries listed above, our model reports that the two left tiles are most likely to contain a `beach`, the two top right tiles are most likely to contain `houses`, and the two bottom right tiles are likely to contain `boats`. We have provided a few representative images from [Unsplash](https://unsplash.com/s/photos/aerial-view) that you can experiment with. Use the image name to put in an initial feature to look for, this will show the original image, and you will get more ideas for features that you can ask the model to identify. """) # buf = st.file_uploader("Upload Image for Analysis", type=["png", "jpg"]) image_file = st.selectbox("Image File", index=0, options=[ "St-Tropez-Port.jpg", "Acopulco-Bay.jpg", "Highway-through-Forest.jpg", "Forest-with-River.jpg", "Eagle-Bay-Coastline.jpg", "Multistoreyed-Buildings.jpg", "Street-View-Malayasia.jpg", ]) searched_feature = st.text_input("Feature to find") if st.button("Find"): # ftmp = NamedTemporaryFile() # ftmp.write(buf.getvalue()) # image = plt.imread(ftmp.name) image = plt.imread(os.path.join("demo-images", image_file)) if len(image.shape) != 3 and image.shape[2] != 3: st.error("Image should be an RGB image") if image.shape[0] < 224 or image.shape[1] < 224: st.error("Image should be at least (224 x 224") st.image(image, caption="Input Image") st.markdown("---") num_rows, num_cols, patches = split_image(image) image_preprocessor = Compose([ ToPILImage(), Resize(224) ]) num_rows, num_cols, patches = split_image(image) patch_probs = get_patch_probabilities( patches, searched_feature, image_preprocessor, model, processor) patch_ranks = get_image_ranks(patch_probs) for i in range(num_rows): row_patches = patches[i * num_cols : (i + 1) * num_cols] row_probs = patch_probs[i * num_cols : (i + 1) * num_cols] row_ranks = patch_ranks[i * num_cols : (i + 1) * num_cols] captions = ["p({:s})={:.3f}, rank={:d}".format(searched_feature, p, r + 1) for p, r in zip(row_probs, row_ranks)] st.image(row_patches, caption=captions)