In the context of SAM, class agnostic annotation enables the segmentation of various objects, including those within the medical domain, without the necessity for extensive fine-tuning. By annotating 11 million images, SAM can identify boundaries of small objects, making it adaptable for unforeseen applications. While SAM can work out of the box, specific use cases may benefit from further expertise and fine-tuning to enhance segmentation accuracy. There are distinct methods for adapting SAM to specialized domains, including domain adaptation for improved zero-shot predictions and prompting techniques to guide the model toward specific objects of interest. Both approaches are crucial for practical applications, as even a highly capable model requires signaling to focus on relevant segments. For example, in retail, users may prioritize specific clothing items over whole models, necessitating visual prompts to adjust SAM's outputs toward desired segments, which enhances its application in industry by maximizing its effectiveness and addressing specific user needs.

Get the Snipd
podcast app

Unlock the knowledge in podcasts with the podcast player of the future.
App store bannerPlay store banner

AI-powered
podcast player

Listen to all your favourite podcasts with AI-powered features

Discover
highlights

Listen to the best highlights from the podcasts you love and dive into the full episode

Save any
moment

Hear something you like? Tap your headphones to save it with AI-generated key takeaways

Share
& Export

Send highlights to Twitter, WhatsApp or export them to Notion, Readwise & more

AI-powered
podcast player

Listen to all your favourite podcasts with AI-powered features

Discover
highlights

Listen to the best highlights from the podcasts you love and dive into the full episode