Quantifying Video Conversation Models

Quantitative Evaluation Framework for Video-based Conversational Models

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Quantitative Evaluation Framework for Video-based Conversational Models

This page provides a detailed walkthrough of quantitative benchmarking framework for Video Conversational Models proposed in Video-ChatGPT. The framework enables an in-depth evaluation of video-based conversational models through two types of assessments:

  1. Video-based Generative Performance Benchmarking
  2. Zero-Shot Question-Answer Evaluation

Video-based Generative Performance Benchmarking

Our framework introduces a benchmark designed to assess the text generation performance of video-based conversational models. We leverage a test set of 500 samples curated from the ActivityNet-200 videos for this purpose.

For quantitative evaluation, we curate a test set based on the ActivityNet-200 dataset, featuring videos with rich, dense descriptive captions and associated question-answer pairs from human annotations. We develop an evaluation pipeline using the GPT-3.5 model that assigns a relative score to the generated predictions on a scale of 1-5.

The generated question-answer pairs are available for download here and the corresponding videos can be downloaded from here.

Our benchmarks cover five key aspects:

  1. Correctness of Information
  2. Detailed Orientation
  3. Contextual Understanding
  4. Temporal Understanding
  5. Consistency
Evaluation Aspect Video Chat LLaMA Adapter Video LLaMA Video-ChatGPT
Correctness of Information 2.23 2.03 1.96 2.40
Detail Orientation 2.50 2.32 2.18 2.52
Contextual Understanding 2.53 2.30 2.16 2.62
Temporal Understanding 1.94 1.98 1.82 1.98
Consistency 2.24 2.15 1.79 2.37

 

Follow the steps below to perform the quantitative benchmarking:

Step 1: Run the inference using the provided question-answer pairs for each criteria.

python video_chatgpt/eval/run_inference_benchmark_general.py \
    --video_dir <path-to-directory-containing-videos> \
    --gt_file <ground-truth-file-containing-question-answer-pairs> \
    --output_dir <output-dir-path> \
    --output_name <output-file-name> \
    --model-name <path-to-LLaVA-Lightening-7B-v1-1> \
    --projection_path <path-to-Video-ChatGPT-weights>
  • Note that the question-answer pairs (gt_file) are the same for correctness, detailed orientation and Contextual understanding.

  • For temporal understanding and consistency, separate question-answer pairs are provided.

Step 2: Execute the corresponding evaluation script to perform benchmarking.

For example, for correctness criteria:

python quantitative_evaluation/evaluate_benchmark_1_correctness.py \
    --pred_path <path-to-prediction-file-generated-using-inference-script> \
    --output_dir <output-directory-path> \
    --output_json <path-to-save-annotation-final-combined-json-file> \
    --api_key <openai-api-key-to-access-GPT3.5-Turbo-model>

For evaluation on all 5 criteria, you can use:

bash quantitative_evaluation/evaluate_benchmark.sh

Note: To further understand how the question-answer annotations are prepared for the benchmarking, refer to: benchmark_dataset_generation.


Zero-Shot Question-Answer Evaluation

Our framework facilitates zero-shot evaluation on five standard open-ended question-answer datasets: MSRVTT, MSVD, TGIF, and ActivityNet-QA. For the sake of brevity, we present the evaluation method on ActivityNet-QA. The evaluation protocol remains the same for all datasets, except for some dataset-specific changes related to videos and annotations.

Model MSVD-QA   MSRVTT-QA   TGIF-QA   Activity Net-QA  
  Accuracy Score Accuracy Score Accuracy Score Accuracy Score
FrozenBiLM 32.2 16.8 41.0 24.7
Video Chat 56.3 2.8 45.0 2.5 34.4 2.3 26.5 2.2
LLaMA Adapter 54.9 3.1 43.8 2.7 - - 34.2 2.7
Video LLaMA 51.6 2.5 29.6 1.8 - - 12.4 1.1
Video-ChatGPT 64.9 3.3 49.3 2.8 51.4 3.0 35.2 2.7

 

Follow these steps to conduct the evaluation:

Step 1: Run the inference. You’ll need the following:

a) Videos: Download the videos for ActivityNet-QA from here.

b) Question and answer annotations: You can obtain these from the official GitHub repository, or download from here.

Run the command:

python video_chatgpt/eval/run_inference_activitynet_qa.py \
    --video_dir <path-to-video-dir> \
    --gt_file_question <test_q.json> \
    --gt_file_answers <test_a.json> \
    --output_dir <path-to-out-dir> \
    --output_name video_chatgpt_activitynet_qa_preds \
    --projection_path <path-to-video-chat-gpt-checkpoint>

This will generate a JSON file containing the model’s predicted responses.

Step 2: Evaluate the predicted responses. The evaluation process computes the accuracy and assigns a score on a scale of 1-5. This step requires the predictions from step-1, question-answer pair annotations, and an OpenAI API key.

Run the command:

python quantitative_evaluation/evaluate_activitynet_qa.py \
    --pred_path <video_chatgpt_activitynet_qa_preds> \
    --output_dir <path-to-out-dir> \
    --output_json <video_chatgpt_activitynet_qa_results> \
    --api_key <your-openai-api_key> \
    --num_tasks 1

Citation

    @article{Maaz2023VideoChatGPT,
        title={Video-ChatGPT: Towards Detailed Video Understanding via Large Vision and Language Models},
        author={Muhammad Maaz, Hanoona Rasheed, Salman Khan and Fahad Khan},
        journal={ArXiv 2306.05424},
        year={2023}
    }