雅达利通过现代升级重振经典7800游戏机

币界网2024-08-20 tarihinde yayınlandı2024-08-20 tarihinde güncellendi

币界网报道:

标志性游戏品牌雅达利周二宣布,将重新推出其1986年的游戏机雅达利7800+,这是一款与游戏发行商PLAION合作开发的现代娱乐产品。这款游戏机将于今年冬天在全球范围内发布,现在可以预购129.99美元。

雅达利7800+是原始控制台的紧凑型版本,专为连接现代电视而设计。每台游戏机都配备了CX78+无线游戏手柄,并包括一款新游戏《宾利熊的水晶探索》,这是经典《水晶城堡》的续作。

雅达利最新的老派复兴延续了去年的雅达利2600+主机,两者有一些共同点。这两款设备都运行2600和7600个卡带,既有来自原始游戏机的卡带,也有新发布的游戏卡带,并支持16:9宽屏显示器。但雅达利7800+的设计不同,它配备了无线游戏手柄而不是操纵杆。

除了主机,雅达利和PLAION还发布了两款新的无线控制器,CX78+无线游戏手柄和CX40+无线操纵杆,每款售价34.99美元。这些控制器与新的7800+和2600+控制台以及原始硬件兼容。

雅达利还将在硬件上推出10款新的游戏卡带,包括Asteroids Deluxe、Berzerk和Epyx Games Collection,其中包含夏季游戏、冬季游戏和加州游戏。每款售价30美元,卡带可在7800+和2600+以及最初的Atari 7800上播放。

与Atari 2600+一样,7800+似乎没有加密集成。多年来,Atari一直在加密货币领域积极开发,最近通过以太坊第二层网络Base推出了Asteroids和Breakout等经典游戏。此前,雅达利已经推出了自己的加密代币、数字收藏品和代币持有者的独家商品。

Decrypt联系了雅达利代表,询问与7800+主机的潜在加密连接,但没有立即收到回复。

编者按:本文是在人工智能的帮助下撰写的。由Andrew Hayward编辑和事实核查。

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