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Vision China Shanghai 2024

TKH Vision旗下隶属公司Allied Vision、LMI Technologies、Chromasens 和 SVS-Vistek 将齐聚Vision China Shanghai 2024。参观我们的展位,一起探索 TKH Vision 一站式的机器视觉解决方案。

 

展位号码:E1.1402

7月8 - 10 号,上海新国际博览中心

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AI-BLOX and Allied Vision

An exciting collaboration between AI-BLOX and Allied Vision. The modular edge technology platform called Blox will be integrating the new Alvium GM2 (GMSL2™ interface) cameras.

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基于索尼CCD传感器相机的末次购买和末次发货期限

采用索尼 CCD 传感器项目的抉择困难:即刻转型还是持续坚守?

我们支持您针对自身项目寻找更好的应对方案。

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Kudan和Allied Vision

Kudan与Allied Vision的合作备受期待。Kudan Grand SLAM软件现已支持Nerian Ruby 3D深度相机,并随同Kudan自主移动机器人的移动机器人开发套件提供。

 

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高分辨率短波红外相机

即将发布:

搭载Sony IMX992/993传感器的Alvium短波红外相机

 

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Goldeye XSWIR LP 扩展型短波红外相机

Goldeye XSWIR 扩展型短波红外相机
像素尺寸低至 2.2 µm,集成 TEC2 双重冷却技术


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我们不止于开发相机,我们探求答案。

在Allied Vision,我们致力通过计算机视觉数码相机助力客户达成目标。这项技术为各行各业的企业机构开辟了一系列全新机遇。我们的相机产品最初基于制造商需求打造,现已扩展到各个领域,包括科学与研究、医学成像、交通监控和运动分析。

 

鉴于我们的客户面临着各种应用挑战,我们始终致力提供灵活多样的相机产品线。这也是我们采用模块化相机设计的原因所在。最终,我们提供了各式传感器、镜头接口、滤镜、主板型号选择以及更多其他选项,最大限度提高灵活性。

 

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“相”您所想

可精准满足您需求的相机技术

我们的工程师设计的数码相机提供了海量的分辨率、帧率、带宽、接口、光谱灵敏度、传感器技术和技术平台选项。我们为此打造了模块化概念,确保相机可灵活适应您的应用需求,而不对您的应用设限。

 

熟谙如何针对不同应用场景寻找最适宜的相机解决方案。这既包括了数码相机本身,也兼顾了适配的镜头连接硬件以及软件接口。我们的工作是在任何场合以直观的方式可靠地输出所需的图像。

 

 

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从嵌入式应用到科研

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技术支持

在图像处理项目的全生命周期中,Allied Vision为您提供全程支持。我们可随时助您将相机集成至自有系统,解决软件相关问题,确保系统在购入相机的数年内仍能发挥一贯性能。

 

我们的专家将为数字相机及其外设,以及它们与您机器视觉系统的整合提供专业的建议、设计、制造和支持。

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最新资讯

Defective pixels

Product News

Why buy an image sensor with pixels that need “correcting”?

Defect pixels are inherent to all CMOS and CCD sensors, due to silicon impurities and manufacturing effects. One can pay extra for fewer defects, but there is no escaping the phenomenon.

Defect pixel correction in machine vision
Impurities in silicon wafers and sensor production processes make it very difficult to obtain defect-free CCD or CMOS sensors. Sensor manufacturers have different grades of sensors based on the number of defective pixels. Those with few to none are classified as higher-grade and are much more expensive. Some specific applications, such as flat panel inspection, might require these higher-grade sensors. Most machine vision applications, however, do not require a “perfect” sensor and the standard grade sensors are a much more cost-effective solution.

  • Question: Hmm.  My smartphone takes great pictures, with no apparent defect pixels, and it costs less than many/most industrial machine vision cameras. Why don’t I see any defect pixels the pictures from my smartphone?
  • Answer: In fact the sensor in your smartphone has many defect pixels, but through configuration masking at build-time and algorithms in the camera’s firmware, the defects are corrected, or more properly stated, smoothed over, by “near neighbor” substitution/interpolation, to generate an image that appears defect free.
  • Question: OK, so why don’t industrial machine vision cameras sensors get the same handling as in smartphones, and spare us this whole conversation?
  • Answer: For machine vision applications, the goal is generally not to create an image that’s pleasing for a human to look at.  Rather it’s to create an image that’s interpretable by software, to take some action, e.g. “good part” vs. “bad part”, or “steer 2 degrees right”.   Depending on sensor, lens, resolution, lighting, and application, the presence of a non-continuous value amidst its neighboring pixels might be either of:

a) A defect pixel arising from the sensor, that is brighter/darker than what it should be relative to the number of photons that actually impacted that sensor position, OR

b) A genuine variance on the target surface

If it’s an instance of (b), and one is inspecting LCD TV/monitors for defects, for example, one wants to let the discontinuity pass from the camera to the software, in order to detect the candidate flaw and take appropriate action.  In the stylized illustration below, suppose the LCD was emitting nominally yellow: for the two anomalies, it would be important to know if those are from the LCD itself or from the camera sensor.   In fact one tries to design applications so that each real-world feature is “seen by” several pixels, to permit defect pixel correction, gain information, and raise efficacy, but the underlying point is hopefully clear.

So machine vision applications designers usually prefer to understand exactly what the naked sensor is generating, and to have options to engage pixel correction features under programmer control.  Perhaps an analogy back to the auto industry is appropriate: self-parking cars are now available, but as a driver I want to decide when to use that feature, whether to keep my skills sharp and park manually sometimes, or whether the situation is inappropriate to use automated-parking.  Give me options, but don’t deny me the possibility of full control if and when I want it.


Learn more
The key takeaway is that defect pixels are a fact of life, and there are effective ways to deal with them. To learn more about the technical details of pixel correction technologies and methods with Allied Vision cameras please download our application note on “Defective Pixel List Management Tool” today.

For further help on this topic, please contact us about your application goals, and we’ll be happy to recommend solutions aligned with your needs.