From 857089622a8a7d7232c83f17b32f5cc55d69ff86 Mon Sep 17 00:00:00 2001 From: N-M-T Date: Fri, 15 Nov 2024 10:22:23 +0800 Subject: [PATCH] Final edits --- alpha-lab/event-automation-gpt/index.md | 54 +++++++++++++++++-------- 1 file changed, 38 insertions(+), 16 deletions(-) diff --git a/alpha-lab/event-automation-gpt/index.md b/alpha-lab/event-automation-gpt/index.md index cd17d1049..99c2596ba 100644 --- a/alpha-lab/event-automation-gpt/index.md +++ b/alpha-lab/event-automation-gpt/index.md @@ -26,48 +26,70 @@ import TagLinks from '@components/TagLinks.vue' - + ::: tip -Tired of endless manual frame-by-frame coding? What if you could capture exactly when users focus on specific objects, or what activities they were engaged in, all without sifting through hours of footage? This proof of concept explores how automating annotations could transform eye tracking analysis. +Tired of endless manual frame-by-frame coding? What if you could automatically capture when people focused on specific +objects or what activities they were engaged in, all without sifting through hours of eye-tracking footage? Here, we +demonstrate how to build your own GPT-based personal annotation assistant! ::: ## Scaling Eye Tracking Analysis with Automation: A Proof of Concept -In eye tracking research, analyzing recordings and identifying key moments—such as when users interact with specific objects—has typically required a tedious, frame-by-frame review. This manual process is time-consuming and limits scalability. +In eye tracking research, analyzing recordings and identifying key moments—such as when users interact with specific +objects—has typically required a tedious, frame-by-frame review. This manual process is time-consuming and limits scalability. -In this article, we explore how automation can overcome these challenges. Using a Large Multimodal Model (GPT-4o), we experiment with prompts to detect specific actions, such as reaching for an object, or what features of the environment were being gazed at, and automatically add the respective annotations to [Pupil Cloud](https://pupil-labs.com/products/cloud) recordings via the Pupil Cloud API. While still in its early stages, this approach shows promise in making the annotation process faster and more scalable. +In this article, we explore how automation can overcome these challenges. Using a Large Multimodal Model (GPT-4o), we +experiment with prompts to detect specific actions, such as reaching for an object, or what features of the environment +were being gazed at, and automatically add the respective annotations to [Pupil Cloud](https://pupil-labs.com/products/cloud) +recordings via the Pupil Cloud API. While still in its early stages, this approach shows promise in making the annotation +process faster and more scalable. ## What This Tool Brings to the Table -This tool comes at a time when the need for more efficient eye tracking analysis workflows is growing. +This tool comes at a time when the need for more efficient eye tracking analysis workflows is growing. For example, our +latest eye tracker, [Neon](https://pupil-labs.com/products/neon), can record (accurately and robustly) for over four hours +continuously. This makes larger-scale data collections feasible. -Our latest eye tracker, [Neon](https://pupil-labs.com/products/neon), can provide accurate and robust gaze recordings. By combining the GPT-4o model with customizable prompts, we test how users can automate the identification process, offering a potential solution for streamlining what is usually a labor-intensive process. +By combining the GPT-4o model with customizable prompts, we test how users can automate the identification process, +offering a potential solution for streamlining what can be a labor-intensive process. ## Getting Started -With this tool, getting started is simple. You'll need to upload recordings to Pupil Cloud, obtain a developer token (click [**here**](https://cloud.pupil-labs.com/settings/developer) to obtain yours), and have an OpenAI key. Then, follow the setup guide linked in our [**Github repository**](https://github.com/pupil-labs/automate_custom_events), which provides all necessary instructions. +With this tool, getting started is simple. You'll need to upload recordings to Pupil Cloud, obtain a developer token +(click [**here**](https://cloud.pupil-labs.com/settings/developer) to obtain yours), and have an OpenAI key. Then, +follow the setup guide linked in [**our Github repository**](https://github.com/pupil-labs/automate_custom_events), +which provides all necessary instructions. The tool's user-friendly GUI will prompt you to select recording details and enter your desired prompts. ## Using The Right Prompt -When defining the prompts, clarity and precision are essential to optimize results with GPT-4o. Users could follow the recommendations listed below to improve detection accuracy: +When defining the prompts, clarity and specificity are essential to optimize results with GPT-4o. Users can follow the +recommendations listed below to improve detection accuracy: -- Be clear and specific: Instead of "the driver is looking around" use "the driver is looking at the rearview mirror". -- Use present tense: Frame prompts in the present tense to align with the video's real-time context, such as "the driver is adjusting the mirror". -- Include relevant context: Add details when necessary, like "the driver is checking the rearview mirror while merging into traffic" to give the model more information to work with. -- Avoid abstract or subjective terms: Stick to concrete, observable actions that can be visually confirmed in the video. Avoid using emotions or intentions as part of the prompt. For example, consider replacing "the driver is distracted" with "the driver is looking at their phone". -- Use specific objects or locations: Mention key objects or areas in the frame to guide the model's attention. For instance, "the person is pointing at the map on the wall" is better than "the person is pointing". +- Be clear and specific: Instead of _"the driver is looking around"_ use _"the driver is looking at the rearview mirror"_. +- Use present tense: Frame prompts in the present tense to align with the video's real-time context, such as _"the driver is adjusting the mirror"_. +- Include relevant context: Add details when necessary, like _"the driver is checking the rearview mirror while merging into traffic"_ to give the model more information to work with. +- Avoid abstract or subjective terms: Stick to concrete, observable actions that can be visually confirmed in the video. Avoid using emotions or intentions as part of the prompt. For example, consider _"the driver is looking at their phone"_ instead of, _"the driver is distracted"_. +- Use specific objects or locations: Mention key objects or areas in the frame to guide the model's attention. For instance, _"the person is pointing at the map on the wall"_ is better than _"the person is pointing"_. - Limit prompts to a single action per frame: For complex scenes with multiple activities, split them into individual prompts to improve detection. ## Event Annotations In Pupil Cloud: Powered By Your Prompts -After processing, event annotations are automatically added to your recording in Pupil Cloud, aligned with frames where the specified activities were detected. +After processing, event annotations are automatically added to your recording in Pupil Cloud, aligned with frames where +the specified activities were detected. -How you then use these events is up to you. In the example video, we chose to run the [Reference Image Mapper](https://docs.pupil-labs.com/neon/pupil-cloud/enrichments/reference-image-mapper/) enrichment between events that corresponded to the beginning and end of a section of interest. But equally, you could download the events and use them for offline analysis, such as computing blink rate for the same section of the recording. +How you then use these events is up to you. In the example video, we chose to run the +[Reference Image Mapper](https://docs.pupil-labs.com/neon/pupil-cloud/enrichments/reference-image-mapper/) enrichment +between events that corresponded to the beginning and end of a section of interest. But you could also download the +events and use them for offline analysis, such as computing blink rate for the same section of the recording. -Our initial tests with GPT-4o have shown promising potential in detecting gazed-at objects and recognizing prompted activities. However, achieving optimal results relies on the clarity and specificity of the provided prompts. We think this tool could mark a significant step toward making eye tracking analysis more dynamic and efficient, opening new possibilities for both experienced researchers and newcomers. Be sure to experiment and post feedback on our [Discord server](https://pupil-labs.com/chat)! +Our initial tests with GPT-4o have shown promising potential in detecting gazed-at objects and recognizing prompted +activities. Achieving the best results relies on the clarity and specificity of the provided prompts. + +We think this tool could mark the beginnings of making eye tracking analysis more dynamic and efficient. Be sure to +experiment and post feedback on our [Discord server](https://pupil-labs.com/chat)! ::: tip Need assistance automating event annotation via the Cloud API? Reach out to us via email at [info@pupil-labs.com](mailto:info@pupil-labs.com), on our [Discord server](https://pupil-labs.com/chat/), or visit our [Support Page](https://pupil-labs.com/products/support/) for formal support options.