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arxiv: 2401.10464 · v1 · pith:VQUQJ72Enew · submitted 2024-01-19 · 💻 cs.HC

PhotoScout: Synthesis-Powered Multi-Modal Image Search

classification 💻 cs.HC
keywords imagephotoscoutsearchperformtasksusersallowsimages
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Due to the availability of increasingly large amounts of visual data, there is a growing need for tools that can help users find relevant images. While existing tools can perform image retrieval based on similarity or metadata, they fall short in scenarios that necessitate semantic reasoning about the content of the image. This paper explores a new multi-modal image search approach that allows users to conveniently specify and perform semantic image search tasks. With our tool, PhotoScout, the user interactively provides natural language descriptions, positive and negative examples, and object tags to specify their search tasks. Under the hood, PhotoScout is powered by a program synthesis engine that generates visual queries in a domain-specific language and executes the synthesized program to retrieve the desired images. In a study with 25 participants, we observed that PhotoScout allows users to perform image retrieval tasks more accurately and with less manual effort.

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  1. Choose, Don't Label: Multiple-Choice Query Synthesis for Program Disambiguation

    cs.PL 2026-04 unverdicted novelty 7.0

    Multiple-choice queries synthesized from Hoare triples enable more reliable identification of intended programs than labeled-example supervision in active learning for program disambiguation.