import streamlit as st import json from collections import Counter import contractions import csv import random import pandas as pd import altair as alt from typing import Tuple, List, Optional from my_model.dataset.dataset_processor import process_okvqa_dataset from my_model.config import dataset_config as config class OKVQADatasetAnalyzer: """ Provides tools for analyzing and visualizing distributions of question types within given question datasets. It supports operations such as data loading, categorization of questions based on keywords, visualization of q uestion distribution, and exporting data to CSV files. Attributes: train_file_path (str): Path to the training dataset file. test_file_path (str): Path to the testing dataset file. data_choice (str): Choice of dataset(s) to analyze; options include 'train', 'test', or 'train_test'. questions (List[str]): List of questions aggregated based on the dataset choice. question_types (Counter): Counter object tracking the frequency of each question type. Qs (Dict[str, List[str]]): Dictionary mapping question types to lists of corresponding questions. """ def __init__(self, train_file_path: str, test_file_path: str, data_choice: str): """ Initializes the OKVQADatasetAnalyzer with paths to dataset files and a choice of which datasets to analyze. Parameters: train_file_path (str): Path to the training dataset JSON file. This file should contain a list of questions. test_file_path (str): Path to the testing dataset JSON file. This file should also contain a list of questions. data_choice (str): Specifies which dataset(s) to load and analyze. Valid options are 'train', 'test', or 'train_test'indicating whether to load training data, testing data, or both. The constructor initializes the paths, selects the dataset based on the choice, and loads the initial data by calling the `load_data` method. It also prepares structures for categorizing questions and storing the results. """ self.train_file_path = train_file_path self.test_file_path = test_file_path self.data_choice = data_choice self.questions = [] self.question_types = Counter() self.Qs = {keyword: [] for keyword in config.QUESTION_KEYWORDS + ['others']} self.load_data() def load_data(self) -> None: """ Loads the dataset(s) from the specified JSON file(s) based on the user's choice of 'train', 'test', or 'train_test'. This method updates the internal list of questions depending on the chosen dataset. """ if self.data_choice in ['train', 'train_test']: with open(self.train_file_path, 'r') as file: train_data = json.load(file) self.questions += [q['question'] for q in train_data['questions']] if self.data_choice in ['test', 'train_test']: with open(self.test_file_path, 'r') as file: test_data = json.load(file) self.questions += [q['question'] for q in test_data['questions']] def categorize_questions(self) -> None: """ Categorizes each question in the loaded data into predefined categories based on keywords. This method updates the internal dictionary `self.Qs` and the Counter `self.question_types` with categorized questions. """ question_keywords = config.QUESTION_KEYWORDS for question in self.questions: question = contractions.fix(question) words = question.lower().split() question_keyword = None if words[:2] == ['name', 'the']: question_keyword = 'name the' else: for word in words: if word in question_keywords: question_keyword = word break if question_keyword: self.question_types[question_keyword] += 1 self.Qs[question_keyword].append(question) else: self.question_types["others"] += 1 self.Qs["others"].append(question) def plot_question_distribution(self) -> None: """ Plots an interactive bar chart of question types using Altair and Streamlit, displaying the count and percentage of each type. The chart sorts question types by count in descending order and includes detailed tooltips for interaction. This method is intended for visualization in a Streamlit application. """ # Prepare data total_questions = sum(self.question_types.values()) items = [(key, value, (value / total_questions) * 100) for key, value in self.question_types.items()] df = pd.DataFrame(items, columns=['Question Keyword', 'Count', 'Percentage']) # Sort data and handle 'others' category specifically if present df = df[df['Question Keyword'] != 'others'].sort_values('Count', ascending=False) if 'others' in self.question_types: others_df = pd.DataFrame([('others', self.question_types['others'], (self.question_types['others'] / total_questions) * 100)], columns=['Question Keyword', 'Count', 'Percentage']) df = pd.concat([df, others_df], ignore_index=True) # Explicitly set the order of the x-axis based on the sorted DataFrame order = df['Question Keyword'].tolist() # Create the bar chart bars = alt.Chart(df).mark_bar().encode( x=alt.X('Question Keyword:N', sort=order, title='Question Keyword', axis=alt.Axis(labelAngle=-45)), y=alt.Y('Count:Q', title='Question Count'), color=alt.Color('Question Keyword:N', scale=alt.Scale(scheme='category20'), legend=None), tooltip=[alt.Tooltip('Question Keyword:N', title='Type'), alt.Tooltip('Count:Q', title='Count'), alt.Tooltip('Percentage:Q', title='Percentage', format='.1f')] ) # Create text labels for the bars with count and percentage text = bars.mark_text( align='center', baseline='bottom', dy=-5 # Nudges text up so it appears above the bar ).encode( text=alt.Text('PercentageText:N') ).transform_calculate( PercentageText="datum.Count + ' (' + format(datum.Percentage, '.1f') + '%)'" ) # Combine the bar and text layers chart = (bars + text).properties( width=800, height=600, ).configure_axis( labelFontSize=12, titleFontSize=16, labelFontWeight='bold', titleFontWeight='bold', grid=False ).configure_text( fontWeight='bold' ).configure_title( fontSize=20, font='bold', anchor='middle' ) # Display the chart in Streamlit st.altair_chart(chart, use_container_width=True) def plot_bar_chart(self, df: pd.DataFrame, category_col: str, value_col: str, chart_title: str) -> None: """ Plots an interactive bar chart using Altair and Streamlit. Args: df (pd.DataFrame): DataFrame containing the data for the bar chart. category_col (str): Name of the column containing the categories. value_col (str): Name of the column containing the values. chart_title (str): Title of the chart. Returns: None """ # Calculate percentage for each category df['Percentage'] = (df[value_col] / df[value_col].sum()) * 100 df['PercentageText'] = df['Percentage'].round(1).astype(str) + '%' # Create the bar chart bars = alt.Chart(df).mark_bar().encode( x=alt.X(field=category_col, title='Category', sort='-y', axis=alt.Axis(labelAngle=-45)), y=alt.Y(field=value_col, type='quantitative', title='Percentage'), color=alt.Color(field=category_col, type='nominal', legend=None), tooltip=[ alt.Tooltip(field=category_col, type='nominal', title='Category'), alt.Tooltip(field=value_col, type='quantitative', title='Percentage'), alt.Tooltip(field='Percentage', type='quantitative', title='Percentage', format='.1f') ] ).properties( width=800, height=600 ) # Add text labels to the bars text = bars.mark_text( align='center', baseline='bottom', dy=-10 # Nudges text up so it appears above the bar ).encode( text=alt.Text('PercentageText:N') ) # Combine the bar chart and text labels chart = (bars + text).configure_title( fontSize=20 ).configure_axis( labelFontSize=12, titleFontSize=16, labelFontWeight='bold', titleFontWeight='bold', grid=False ).configure_text( fontWeight='bold') # Display the chart in Streamlit st.altair_chart(chart, use_container_width=True) def export_to_csv(self, qs_filename: str, question_types_filename: str) -> None: """ Exports the categorized questions and their counts to two separate CSV files. Parameters: qs_filename (str): The filename or path for exporting the `self.Qs` dictionary data. question_types_filename (str): The filename or path for exporting the `self.question_types` Counter data. This method writes the contents of `self.Qs` and `self.question_types` to the specified files in CSV format. Each CSV file includes headers for better understanding and use of the exported data. """ # Export self.Qs dictionary with open(qs_filename, mode='w', newline='', encoding='utf-8') as file: writer = csv.writer(file) writer.writerow(['Question Type', 'Questions']) for q_type, questions in self.Qs.items(): for question in questions: writer.writerow([q_type, question]) # Export self.question_types Counter with open(question_types_filename, mode='w', newline='', encoding='utf-8') as file: writer = csv.writer(file) writer.writerow(['Question Type', 'Count']) for q_type, count in self.question_types.items(): writer.writerow([q_type, count]) def run_dataset_analyzer() -> None: """ Executes the dataset analysis process and displays the results using Streamlit. This function provides an overview of the dataset, it utilizes the OKVQADatasetAnalyzer to visualize the data. """ # Load datasets from Excel datasets_comparison_table = pd.read_excel(config.DATASET_ANALYSES_PATH, sheet_name="VQA Datasets Comparison") okvqa_dataset_characteristics = pd.read_excel(config.DATASET_ANALYSES_PATH, sheet_name="OK-VQA Dataset Characteristics") # Process OK-VQA datasets for validation and training val_data = process_okvqa_dataset(config.DATASET_VAL_QUESTIONS_PATH, config.DATASET_VAL_ANNOTATIONS_PATH, save_to_csv=False) train_data = process_okvqa_dataset(config.DATASET_TRAIN_QUESTIONS_PATH, config.DATASET_TRAIN_ANNOTATIONS_PATH, save_to_csv=False) # Initialize the dataset analyzer dataset_analyzer = OKVQADatasetAnalyzer(config.DATASET_TRAIN_QUESTIONS_PATH, config.DATASET_VAL_QUESTIONS_PATH, 'train_test') # Display KB-VQA datasets overview with st.container(): st.markdown("## Overview of KB-VQA Datasets") col1, col2 = st.columns([2, 1]) with col1: st.write(" ") with st.expander("1 - Knowledge-Based VQA (KB-VQA)"): st.markdown(""" [Knowledge-Based VQA (KB-VQA)](https://arxiv.org/abs/1511.02570): One of the earliest datasets in this domain, KB-VQA comprises 700 images and 2,402 questions, with each question associated with both an image and a knowledge base (KB). The KB encapsulates facts about the world, including object names, properties, and relationships, aiming to foster models capable of answering questions through reasoning over both the image and the KB.\n""") with st.expander("2 - Factual VQA (FVQA)"): st.markdown(""" [Factual VQA (FVQA)](https://arxiv.org/abs/1606.05433): This dataset includes 2,190 images and 5,826 questions, accompanied by a knowledge base containing 193,449 facts. The FVQA's questions are predominantly factual and less open-ended compared to those in KB-VQA, offering a different challenge in knowledge-based reasoning.\n""") with st.expander("3 - Outside-Knowledge VQA (OK-VQA)"): st.markdown(""" [Outside-Knowledge VQA (OK-VQA)](https://arxiv.org/abs/1906.00067): OK-VQA poses a more demanding challenge than KB-VQA, featuring an open-ended knowledge base that can be updated during model training. This dataset contains 14,055 questions and 14,031 images. Questions are carefully curated to ensure they require reasoning beyond the image content alone.\n""") with st.expander("4 - Augmented OK-VQA (A-OKVQA)"): st.markdown(""" [Augmented OK-VQA (A-OKVQA)](https://arxiv.org/abs/2206.01718): Augmented successor of OK-VQA dataset, focused on common-sense knowledge and reasoning rather than purely factual knowledge, A-OKVQA offers approximately 24,903 questions across 23,692 images. Questions in this dataset demand commonsense reasoning about the scenes depicted in the images, moving beyond straightforward knowledge base queries. It also provides rationales for answers, aiming to be a significant testbed for the development of AI models that integrate visual and natural language reasoning.\n""") with col2: st.markdown("#### KB-VQA Datasets Comparison") st.write(datasets_comparison_table, use_column_width=True) st.write("-----------------------") # Display OK-VQA dataset details with st.container(): st.write("\n" * 10) st.markdown("## OK-VQA Dataset") st.write("This model was fine-tuned and evaluated using OK-VQA dataset.\n") with st.expander("OK-VQA Dataset Characteristics"): st.markdown("#### OK-VQA Dataset Characteristics") st.write(okvqa_dataset_characteristics) with st.expander("Questions Distribution over Knowledge Category"): df = pd.read_excel(config.DATASET_ANALYSES_PATH, sheet_name="Question Category Dist") st.markdown("#### Questions Distribution over Knowledge Category") dataset_analyzer.plot_bar_chart(df, "Knowledge Category", "Percentage", "Questions Distribution over Knowledge Category") with st.expander("Distribution of Question Keywords"): dataset_analyzer.categorize_questions() st.markdown("#### Distribution of Question Keywords") dataset_analyzer.plot_question_distribution() # Display sample data with st.container(): with st.expander("Show Dataset Samples"): n = random.randint(1,len(train_data)-10) # Displaying 10 random samples. st.write(train_data[n:n+10])