Look Where It Matters: High-Resolution Crops Retrieval for Efficient VLMs episode artwork

EPISODE · Mar 25, 2026 · 26 MIN

Look Where It Matters: High-Resolution Crops Retrieval for Efficient VLMs

from Daily Paper Cast · host Jingwen Liang, Gengyu Wang

🤗 Upvotes: 60 | cs.CV, cs.AI Authors: Nimrod Shabtay, Moshe Kimhi, Artem Spector, Sivan Haray, Ehud Rivlin, Chaim Baskin, Raja Giryes, Eli Schwartz Title: Look Where It Matters: High-Resolution Crops Retrieval for Efficient VLMs Arxiv: http://arxiv.org/abs/2603.16932v1 Abstract: Vision-language models (VLMs) typically process images at a native high-resolution, forcing a trade-off between accuracy and computational efficiency: high-resolution inputs capture fine details but incur significant computational costs, while low-resolution inputs advocate for efficiency, they potentially miss critical visual information, like small text. We present AwaRes, a spatial-on-demand framework that resolves this accuracy-efficiency trade-off by operating on a low-resolution global view and using tool-calling to retrieve only high-resolution segments needed for a given query. We construct supervised data automatically: a judge compares low- vs.\ high-resolution answers to label whether cropping is needed, and an oracle grounding model localizes the evidence for the correct answer, which we map to a discrete crop set to form multi-turn tool-use trajectories. We train our framework with cold-start SFT followed by multi-turn GRPO with a composite reward that combines semantic answer correctness with explicit crop-cost penalties. Project page: https://nimrodshabtay.github.io/AwaRes

Episode metadata supplied by the publisher feed · Published Mar 25, 2026

🤗 Upvotes: 60 | cs.CV, cs.AI Authors: Nimrod Shabtay, Moshe Kimhi, Artem Spector, Sivan Haray, Ehud Rivlin, Chaim Baskin, Raja Giryes, Eli Schwartz Title: Look Where It Matters: High-Resolution Crops Retrieval for Efficient VLMs Arxiv: http://arxiv.org/abs/2603.16932v1 Abstract: Vision-language models (VLMs) typically process images at a native high-resolution, forcing a trade-off between accuracy and computational efficiency: high-resolution inputs capture fine details but incur significant computational costs, while low-resolution inputs advocate for efficiency, they potentially miss critical visual information, like small text. We present AwaRes, a spatial-on-demand framework that resolves this accuracy-efficiency trade-off by operating on a low-resolution global view and using tool-calling to retrieve only high-resolution segments needed for a given query. We construct supervised data automatically: a judge compares low- vs.\ high-resolution answers to label whether cropping is needed, and an oracle grounding model localizes the evidence for the correct answer, which we map to a discrete crop set to form multi-turn tool-use trajectories. We train our framework with cold-start SFT followed by multi-turn GRPO with a composite reward that combines semantic answer correctness with explicit crop-cost penalties. Project page: https://nimrodshabtay.github.io/AwaRes

PodParley-generated summary based on available episode metadata and transcript content.

NOW PLAYING

Look Where It Matters: High-Resolution Crops Retrieval for Efficient VLMs

0:00 26:12

No transcript for this episode yet

We transcribe on demand. Request one and we'll notify you when it's ready — usually under 10 minutes.

No similar episodes found.

Frequently Asked Questions

How long is this episode of Daily Paper Cast?

This episode is 26 minutes long.

When was this Daily Paper Cast episode published?

This episode was published on March 25, 2026.

What is this episode about?

🤗 Upvotes: 60 | cs.CV, cs.AI Authors: Nimrod Shabtay, Moshe Kimhi, Artem Spector, Sivan Haray, Ehud Rivlin, Chaim Baskin, Raja Giryes, Eli Schwartz Title: Look Where It Matters:...

Can I download this Daily Paper Cast episode?

Yes, you can download this episode by clicking the download button on the episode player, or subscribe to the podcast in your preferred podcast app for automatic downloads.
URL copied to clipboard!