Правительство РФ предложило ввести уголовную ответственность для дропов

cryptonews.ruPublicado a 2024-12-28Actualizado a 2025-04-28

Что произошло? Правительство РФ подготовило поправки о введении уголовной ответственности для дропов. Так, оформление и передача своих банковских карт, цифровых кошельков наличных мошенникам за вознаграждение или под влиянием злоумышленников грозит заключением на срок до шести лет и штрафом до 1 млн рублей.

Материал Ведомостей

Что еще известно? Инициатива предполагает внесение поправок в ст. 187 Уголовного кодекса «Неправомерный оборот средств платежей». 28 апреля Комиссия Правительства по законопроектной деятельности рассмотрит поправки для их последующего внесения в Госдуму.

Авторы инициативы уточняют, что деятельность дропов затрудняет отслеживание преступных средств. Представитель аппарата вице-премьера Дмитрия Григоренко уточнил, что поправки позволят создать серьезные препятствия для вывода мошенниками украденных средств, а уголовная ответственность сократит количество желающих поучаствовать в преступных схемах за вознаграждение.

Так, за передачу личной банковской карты с целью получения вознаграждения грозит штраф от 100 000 до 300 000 рублей или в размере дохода от трех месяцев до года, обязательные работы до 480 часов, исправительные работы до двух лет или ограничение свободы до двух лет.

Если участник схемы не был клиентом банка, но оформил карту специально с целью передачи мошенникам, наказание более строгое: штраф от 300 000 до 1 млн рублей, принудительные работы до четырех лет, лишение свободы на срок до шести лет с возможным штрафом от 10 000 до 500 000 рублей или в размере дохода за период от года до двух лет.

Те, кто используют чужие банковские карты или электронные кошельки, могут столкнуться с наказанием в виде принудительных работ до пяти лет и возможным штрафом от 300 000 до 1 млн рублей, либо лишением свободы до шести лет, возможным аналогичным штрафом и ограничением свободы до двух лет.

В марте глава ЦБ Эльвира Набиуллина допустила возможность введения ограничений количества банковских карт на человека с целью борьбы с дропами.

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