1. #Kaart2025 #maproulette mapeo de vĂ­as

    Closed
    #176689875 0 1 0 0
  2. #Kaart2025 #maproulette

    Closed
    #176689852 153 35 4 0
  3. #Kaart2025 #maproulette

    Closed
    #176689670 708 4 0 0
  4. ajuste menor

    Closed
    #175414368 0 1 0 0
  5. ajuste menor

    Closed
    #175378052 0 1 0 0
  6. ajuste menor

    Closed
    #175377962 0 8 0 0
  7. ajuste menor

    Closed
    #175377886 0 78 0 0
  8. ajuste menor

    Closed
    #175377634 0 1 28 0
  9. ajuste menor

    Closed
    #175377468 0 1 25 0
  10. ajuste menor

    Closed
    #175377445 0 1 0 0
  11. ajustes menores

    Closed
    #174920058 25 0 0 0
  12. #hotosm-project-34854 #2025_LACH_CAR_TC identifying damaged buildings using Maxar imagery

    Closed
    #174824237 10 55 35 0
  13. #hotosm-project-34854 #2025_LACH_CAR_TC identifying damaged buildings using Maxar imagery

    Closed
    #174823921 0 39 12 0
  14. #hotosm-project-34854 #2025_LACH_CAR_TC identifying damaged buildings using Maxar imagery

    Closed
    #174823540 0 10 5 0
  15. #hotosm-project-34854 #2025_LACH_CAR_TC identifying damaged buildings using Maxar imagery

    Closed
    #174823414 5 16 5 0
  16. #hotosm-project-34854 #2025_LACH_CAR_TC identifying damaged buildings using Maxar imagery

    Closed
    #174823269 19 53 15 0
  17. #hotosm-project-34854 #2025_LACH_CAR_TC identifying damaged buildings using Maxar imagery

    Closed
    #174822794 0 14 10 0
  18. #hotosm-project-34854 #2025_LACH_CAR_TC identifying damaged buildings using Maxar imagery

    Closed
    #174822718 0 3 0 0
  19. #hotosm-project-34854 #2025_LACH_CAR_TC identifying damaged buildings using Maxar imagery

    Closed
    #174822667 0 4 10 0
  20. #hotosm-project-34854 #2025_LACH_CAR_TC identifying damaged buildings using Maxar imagery

    Closed
    #174822596 0 23 10 0