"三度梅"沈铁梅领衔新版川剧《江姐》重庆首演
The World & Chongqing(2018)
Abstract
观众们用掌声伴奏熟悉的《红梅赞》,用掌声赞叹川味普通话的对白——1月12日至14日,这样的场景连续3晚在重庆川剧院艺术中心反复出现.每场演出前剧场外都会有一些急切的寻票者,他们知道阔别山城舞台40多年的《江姐》又回来了.
"红岩上红梅开,千里冰霜脚下踩.三九严寒何所惧,一片丹心向阳开……"像其他许多表现江姐英雄形象的红色经典一样,现代川剧《江姐》也取材于小说《红岩》.1949年春,江姐奉中共重庆市委指示去华蓥山工作,途中看到丈夫遇害的告示及被悬挂着的头颅,悲愤难忍.但她强压悲愤,与双枪老太婆一道劝阻华蓥山游击队员与敌人硬拼复仇,坚持在丈夫牺牲的地方继续战斗.在一次接头中,江姐被叛徒甫志高出卖,被捕入狱后受尽酷刑,不屈不挠,在重庆解放前夕惨遭杀害.
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