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<idAbs>RECENSEMENT ARCHITECTURAL DU CANTON - DONNEES VALIDEES&lt;br /&gt;&lt;br /&gt;Le recensement architectural du canton (RAC) vise à répertorier, à documenter et à évaluer tous les bâtiments construits dans le canton avant 1985, afin d'identifier les objets dignes d'intérêt. Les opérations consistent à la fois dans l'analyse des archives cadastrales, des dossiers de requête en autorisation de construire et de la bibliographie, dans la visite et la prise photographique de chaque objet, enfin dans l'évaluation de l'intérêt patrimonial de chaque édifice suivant une échelle de quatre valeurs. Les résultats du recensement architectural n'ont pas de valeur légale et sont indicatifs. Les données présentées ici ont été validées par la Commission scientifique de suivi du RAC.</idAbs>
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<keyword>Cadastre / aménagement</keyword>
<keyword>Constructions et ouvrages</keyword>
<keyword>Société</keyword>
<keyword>Environnement</keyword>
<keyword>190_PUBLISHVECTORS_PUBLISHING</keyword>
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<idPurp>Recensement architectural - Données validées</idPurp>
<idCredit>© 2026 SITG</idCredit>
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