salespsci 发表于 2015-11-11 11:04:55

滨松科研级相机,用于生命科学研究&生物显微成像

科研级CMOS相机ORCA-Flash4.0 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量子效率增强的ORCA-Flash 4.0       V2,峰值效率82%
科学研究中的突破性进展往往并不是一蹴而就的,它更多是一步一个脚印循序渐进的,而正是这些精细应用的不断改善促进了科学研究的发展。ORCA-Flash 4.0       V2正是这一过程的典型案例。从入门级产品开始ORCA-Flash 4.0挑战了现今的成像领域并且经历了一系列性能的提高。最近的改善也许是最令人兴奋的:显著提高的光子探测能力。其量子效率的提高意味着您可以探测到极弱的或者相对暗淡的信号,即您可以用更少的曝光时间获得理想的成像,使您的细胞远离光毒性或光漂白。ORCA-Flash 4.0       V2相机提供了宽场视野,大动态范围和快帧速等特点,其在量子效率上的提高使得它更加通用、强大。

产品特点:
量子效率QE峰值82%慢速扫描读出模式,读出噪声RMS仅1.4电子荧光或其他宽场显微技术应用的重要选择在单像素点十几~几十个光子的级别,性能优于EMCCD可提供样机试用
应用:--超分辨显微技术--全内反射显微镜--比率成像--荧光共振能量转移--高速钙离子成像--实时共聚焦显微镜--光片照明显微成像      

EM-CCD相机 ImagEM       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t+7rG8fCsnSMdTjjjrVuQLKJAqyzaGKaR3ZUwydxfEDmTjxqtI4adJ9Zl1uq7+A4LesfuuvSMdTgZx1oOo2Gc7DsvWRSepXvQrpQ8OgwMDywK0V9s+4fc1nbBOvYdm28ikzEO9CulD/dHDA+ArSX9of7o/Ogxu1ozsCU+DJ/qFcBbWkV5tC2gmGqOWVFceILAEfU16H2pXPZ658ih/8AMVw+zBja9kf/AL0/1Ciar9o+xNxsidmtIpLixkUcQMsnkcffFYlnsbaO1LtLWJGlyeS5yeOO94CvegmaBCqeyAM88DFVGVsTZCbH2TBZrxKjLsOrHn8PyrQ0VNpo0VVP3dLu/Op9FLu6iK0kKSRtHIiujDBVhkGnLGqKFRQqgYAA4AfapWTFNxUXHNdtrE3uyYQPwTgnh4gj7kV53s7a93stzbSYlt86JIHAIxniBnrz+texXtul3Zy2snsyrgnqD0I8xXjHaO1k2ZtFkuIyjYyW/C/9oe+iru2b/Y99YA2dkba6WQDKgAFdIzy4cCB4c/kv8n6O3aK6jU8HgINc206SYROJPM+Ar0T+TfYUttHLtOeMoZ+EasOOnxqjvYwyxqpOcAD41mX22DabVjsVhWQFA8jauIzkAAY4nuseOOVagqhtHZce0JYZd4YZI+BZQCWXw4+fXmPjUHJbfsZVs9qysjKglV0z1y/T4GuQtuEwr0/tmQnZe5HiUA/zr/A15jB+2HvqosT+38K0uy//AFDbf4/9DVnT+18KvdmjjtDae9v9DUHoYFOUerA8z96bUijuCoMrbkYkh0vGHQxuGAGW9k+yMHPyNcncvvLa7BnnmCPKuq37k0XFAEA1DURnBODzPEdeu24EMHrELLofOniQNPIDrnlyP51yNxMWtbpzdSOI5JVMlsumWDBj7mMjU3HBODzJzRU0y6bqS4KaNOtTdRHSUzMvc093LHOSeufxcjGjCBIJd7Fb5mEe9tkLRN65vVjh7R4ZOfh4vl9VeS3CJu9OtDdwckJmGVK93vHiSePPrTI3aEQsZorUPKqCS3XXEcznuDh7R6knh4DjQRqmgFXUxlt2u6c6oZMiQaI244Y9TngSePjbtkSW0W1cDVuwq2zHl6kd2NuPxPu51STQvq8BNe7QRlg0UmRJ3I272GOcE54Enj0N+w4ejQkKCECmBu8Y/U+zE3HPmfdz6gyWMyb1CHnCll0IcTR95O4vio6nj1qH2pEm17xzIo9Itxgt61zhk/qx1OOPnUjymYyxDXNpZ03ceFnQhoxoU9QOp9/jULyiSdJ8rKWdAZ4OGrEr8HXhiMYJJxx86Dq9gtr2FZNvYZcwr34U0oceAwMD9e6+h9cwxyUfc1n7CfVsKyfexy+pXvxKVQ8ByGBgeWM+VXIGzdTrj2dI/XzoKvaJdWwLweCZ+RBrgtl8NqWh8J0/1CvR9pIZdlXcY/FCw/8AE15vYHTtC34f95fuKI9exRipMUYqiPTRp8qk00Yqixpo01JijFBGUzVd+6cVcxWFdbQVNvSWMhxqQOhPU9RUE8z5U1lbR2dZ7Si3V5bpMnQOOXuPSr8rZqCorNsuzGxbOTXDs+LI/ey33OK34u6ukchyFVUOKnQ0FgGnVGrVIo1UHK/yh3iRbLhts955ASPIA/niuAtQS+rpWr2x2qdp7bcK2Y4u6g8+v5VRtk0oKrJZ/aHGrewG07cszjPrQPnw/Oq1yOC1Jss6Nq2j44LOhP8AmFB6ZUi+zTKUuq6QTgnl+viKisntBKkMAZ8jCOwKjLLheYA4muUupmFtcy70hEaYG5tFxNBnRhCvDU55E+Z48K6btBsybad5YxxQlRpmU3YfBtsqACB1J5VWTsq8qTvLdCC6V3W2uLfgyIwAJbGMuccT50VgXJ0zXF2XaEqzoby1GVjBmU6Coxlz1P3pqn0e4R8Ja5ZU1xDXbkb89wDj3zzJ8vOuyi2DYwXyXkceHVGUqMBSWILNjxJAqxbbPtbWBYIoEWIMX0aRjJOcjPmc0HGWeyb0hrVLMwPBHG0tqx1RKmJO7ExzhzqGSCMZPGtWw2FdCC0MwCxtGFeBjk2w0BdKHzPM104WmGWNObj4caDHHZqCSKVLid5GL4ikXg8ceVIQH/Dzq+mzbKK7e6W2jErpuy2n8OScY5cyatDW3sxt727v3/hTd1MebovmBmgYFitbfSiqkaDCoqgAeQ8KW1gaKIu/tytqbyqRY0Vw7FnYcsngPcKeX1HNAhAIIPI8DXl6xmDaQiPExygH516czV55aR/zh2ldlHqmnZ2P9kNn9fCiPWKUVnJtBW61Ml4rHGaouAUYqNJNQ4VJmqLRamlqjLUwmgmL15929uRs/a0F3JLuldVCN4MCa7hpMVzfbHYsXaHYz22oJLEdcTHHA+HHx5UDNk7Zj2nbgkgTKO+B18xV+vOoZZbF0KMUli4A4weH8etdLs/tRBIAl4N05/GPZJ/I1krZsr6K+DtErhVOAzjAbjjI8uH651oLWRs4LFLJuZovRCSYlU8fj7uXuFaRuIlGS4oq0DWL2u7QJsjZZhjObq5BVAPwr1bxqntftpYbOjZbdxPP0VDkD3n8vKvPby7udq3jT3Dl3c8c9PADpj3VU0kCtLMZG4knJPnWpGuABVe2hCKKtrwFVmmTqWj4dDmq6sY2DjmpzVwjKMPEcPfVI0HqwIYAg5BGRTxyqnsuXf7KtJM84Vz78cauVlohIHMge+ozcRn2TqI/dGqjcxEjMYc/2uNSOHTgylfAEYoqPXMT3YtJ/tNikEcpJ1SgZ6Kv5mnFqY0qLzIAoHbqMcSC5/tMfsOFKp0ZCBVHgoxWdcbb2fbnS1yhb91Tk/IVV/n2Sfu2dhcTZ6ldI+vGg2yaaXA5kD31lx2PaS/GRFFag+RYirUPYu4uADtDaMz+Kq2PoKBLnatlb/tLhFPgWFUm7QI5xa2txOf7KYH1510ln2R2VagFbdWbxYZzWpFZQQgCONVA8Big4G4te021UMEVtHaRPwYs+WI6jy/91p7G7L+gQad1Gjn2ipJz8/tXZCPA4CkCVYMmPZiAnh9KnWyRTnTmtDRml3dBTWAA8BTt17qt6KN2PCqKRWmFKvm3HSkNv5URmPE2OFVZopNJ7tbno/lSG38qDjL/AGLaXYzNaIW/eHA/SucvOy1qv7MyR+QavUpLRXHFRVWXZkbg5UVEeRtsS7gJNvctj3lSKpXNptMgCXfSL4ZLCvWp+z0UvIY91Z03Zjj3STRXlG7CHDoVPgedWIjGOVd9P2bkIIeFXHgRms2fsojN/wAsV814VUjnEapVatGXspMvGFmHgGGT86rSbD2pD/2d4OhTr+dEZ8W1LZ7w2hJWTOOPInw+/wCsU90Gs45VVn2K6Xwuza3W8U5IWM4J/X6Falhsvat7KD/NsmgEEhzpz5UHc7BQx7CtFbnu8/A8R96uPcRIMu6ge+s2LYXaO9UCS5jtkH4Yk5Dw41eg/k/hlIa+uJbhjz1MSPvUaa2w5be7tZpLSeNpFfSWGG09cfKrd7I9xM0CRpIrLpGrChXxng3MkDpj30bP2DBstSLLEOoYbhnNXona3UpIpILE61XnnxAzQcPPsLtJMwX0y2jiJILwDPwJP8Ks2vY1Qpkv7iW6yQG1v3QM8QBkDJ5Z6ZrsGkWdtKhgFOSGUqT86SeJmi7qgsGUjJxyYH8qQYEOwtm26uw2egI1ORhRjGrAGM8xjw5fCtJIUhkMcMCDdoCcDnkkY4Kc4x4dSalFm6RrGqpgIoOOGSvH6knP6NPmhlYyERZLpGFyRj2iTzB6EdKBiM5yWQIqjJLEj7qKjkuWVpMbs8DoBK8eHDjvOXLoM1atoGhd9Sqo0ryA4kE+AHTFEqSoztEXZpAcexhTjAznj/tRArIdJQlw2eKjIHxpS6rNugGZ8asKOQyRn6dKmZHLLpYBeOoFck+HGojHN6SzRsqjQoDMurJy2fCikZ1CgqrOSTwUDhjn1pDIolMYV2YcW0gYX38ac1uxh3SuoBJLMVy3HmRx4HiePnTnjk16omRc8wyZ/MVVRiZdLE57rBQoXie6Dy+PXFLvQFyyOp4d0jiSegxw+tKsDJrYOC7MGDFeR0gfl9acI5mGZJELDiuEwAfdnPXxoERtfNGQgcmH8OHyp2KEWQZMkgY9NKYA+9OoHYoxRRWkLikIzRRUCbtfCjdrRRUBuFo9Hj8KKKBDbRnoKY1nCeag/CiigjNjB+4PlR6DB/Vp/looog9Atv6lP8oqRbWEckFFFBKqKoxgU8AeFFFAtJRRQJigCiiqoxRiiioCiiigKTFFFAUUUUUlLRRQGKTFFFB//9k=ImagEM       X2是一款非常多功能的相机,全画幅下输出速度达70帧/秒,模拟拼接(binning)操作下对兴趣区域(ROIs)的输出达1076帧/秒,工作安静,在接近黑暗的条件下具有很高的信噪比,且暗电流极低。因此,ImagEM X2相机既能长时间又能快速地进行定量超弱光成像。当关闭电子倍增增益(EM)后,该相机的超深满阱容量可以在最低对比度图像中提取信息。新增特性提高了整体信噪比和非EM的动态范围,巧妙地重新设计了具有最大速度和最精密性能的相机。

产品特点:
量子效率高达90%,EM电子增益最大1200倍读出噪声最小1电子稳定制冷温控,获得高稳定度EM增益可选读出模式:根据样品亮度、所需帧频或曝光时间,选择最优图像采集的读出模式光子成像模式,非常适合不超过10个光子的超低光领域应用
应用:
--蛋白质相互作用--细胞网络中的钙波和细胞内离子流出--实施转盘共聚焦显微成像--TIRF显微成像单原子成像--体内血细胞荧光显微--荧光基因表达成像

关于顶尖科仪:顶尖科仪(中国)股份有限公司是一家专业代理和经销国际品牌的激光器、光谱仪器、光学、光电子、光机械和光纤通讯产品的高科技贸易和技术服务公司。公司代理和经销产品广泛,涉及光电子、光通讯、激光、光学、物理、电子和生物等领域,可广泛应用于教学、科研、产品开发及规模生产。顶尖科仪以强大的生产商阵容、广泛的产品和强大的技术支持为支撑,致力于开拓中国市场,为中国广大的科研和工业客户提供国际一流的产品和服务。
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