@inproceedings{khadloya-etal-2025-courtnav,
title = "{C}ourt{N}av: Voice-Guided, Anchor-Accurate Navigation of Long Legal Documents in Courtrooms",
author = "Khadloya, Sai and
Juvekar, Kush and
Bhattacharya, Arghya and
Saxena, Utkarsh",
editor = "Aletras, Nikolaos and
Chalkidis, Ilias and
Barrett, Leslie and
Goanț{\u{a}}, C{\u{a}}t{\u{a}}lina and
Preoțiuc-Pietro, Daniel and
Spanakis, Gerasimos",
booktitle = "Proceedings of the Natural Legal Language Processing Workshop 2025",
month = nov,
year = "2025",
address = "Suzhou, China",
publisher = "Association for Computational Linguistics",
url = "https://aclanthology.org/2025.nllp-1.25/",
pages = "351--358",
ISBN = "979-8-89176-338-8",
abstract = "Judicial work depends on close reading of longrecords, charge sheets, pleadings, annexures,orders, often spanning hundreds of pages. Withlimited staff support, exhaustive reading duringhearings is impractical. We present CourtNav,a voice-guided, anchor-first navigator for legalPDFs that maps a judge{'}s spoken command(e.g., ``go to paragraph 23'', ``highlight the contradiction in the cross-examination'') directlyto a highlighted paragraph in seconds. CourtNav transcribes the command, classifies intentwith a grammar-first, LLM-backed router, retrieves over a layout-aware hybrid index, andauto-scrolls the viewer to the cited span whilehighlighting it and close alternates. By design, the interface shows only grounded pas-sages, never free text, keeping evidence verifiable and auditable. This need is acute in India, where judgments and cross-examinations notoriously long.In a pilot on representative charge sheets, pleadings, and orders, median time-to-relevance drops from 3{--}5 minutes (manual navigation) to 10{--}15 seconds;with quick visual verification included, 30{--}45seconds. Under fixed time budgets, thisnavigation-first design increases the breadth ofthe record actually consulted while preservingcontrol and transparency"
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<abstract>Judicial work depends on close reading of longrecords, charge sheets, pleadings, annexures,orders, often spanning hundreds of pages. Withlimited staff support, exhaustive reading duringhearings is impractical. We present CourtNav,a voice-guided, anchor-first navigator for legalPDFs that maps a judge’s spoken command(e.g., “go to paragraph 23”, “highlight the contradiction in the cross-examination”) directlyto a highlighted paragraph in seconds. CourtNav transcribes the command, classifies intentwith a grammar-first, LLM-backed router, retrieves over a layout-aware hybrid index, andauto-scrolls the viewer to the cited span whilehighlighting it and close alternates. By design, the interface shows only grounded pas-sages, never free text, keeping evidence verifiable and auditable. This need is acute in India, where judgments and cross-examinations notoriously long.In a pilot on representative charge sheets, pleadings, and orders, median time-to-relevance drops from 3–5 minutes (manual navigation) to 10–15 seconds;with quick visual verification included, 30–45seconds. Under fixed time budgets, thisnavigation-first design increases the breadth ofthe record actually consulted while preservingcontrol and transparency</abstract>
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%0 Conference Proceedings
%T CourtNav: Voice-Guided, Anchor-Accurate Navigation of Long Legal Documents in Courtrooms
%A Khadloya, Sai
%A Juvekar, Kush
%A Bhattacharya, Arghya
%A Saxena, Utkarsh
%Y Aletras, Nikolaos
%Y Chalkidis, Ilias
%Y Barrett, Leslie
%Y Goanță, Cătălina
%Y Preoțiuc-Pietro, Daniel
%Y Spanakis, Gerasimos
%S Proceedings of the Natural Legal Language Processing Workshop 2025
%D 2025
%8 November
%I Association for Computational Linguistics
%C Suzhou, China
%@ 979-8-89176-338-8
%F khadloya-etal-2025-courtnav
%X Judicial work depends on close reading of longrecords, charge sheets, pleadings, annexures,orders, often spanning hundreds of pages. Withlimited staff support, exhaustive reading duringhearings is impractical. We present CourtNav,a voice-guided, anchor-first navigator for legalPDFs that maps a judge’s spoken command(e.g., “go to paragraph 23”, “highlight the contradiction in the cross-examination”) directlyto a highlighted paragraph in seconds. CourtNav transcribes the command, classifies intentwith a grammar-first, LLM-backed router, retrieves over a layout-aware hybrid index, andauto-scrolls the viewer to the cited span whilehighlighting it and close alternates. By design, the interface shows only grounded pas-sages, never free text, keeping evidence verifiable and auditable. This need is acute in India, where judgments and cross-examinations notoriously long.In a pilot on representative charge sheets, pleadings, and orders, median time-to-relevance drops from 3–5 minutes (manual navigation) to 10–15 seconds;with quick visual verification included, 30–45seconds. Under fixed time budgets, thisnavigation-first design increases the breadth ofthe record actually consulted while preservingcontrol and transparency
%U https://aclanthology.org/2025.nllp-1.25/
%P 351-358
Markdown (Informal)
[CourtNav: Voice-Guided, Anchor-Accurate Navigation of Long Legal Documents in Courtrooms](https://aclanthology.org/2025.nllp-1.25/) (Khadloya et al., NLLP 2025)
ACL