Comments (1)
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To calculate the tradebook for Signal-to-Noise Ratio (SNR) versus image diameter, we need to consider the following factors:
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Signal Power: The signal power is directly proportional to the image diameter. As the image diameter increases, the signal power also increases.
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Noise Power: The noise power is independent of the image diameter. It remains constant regardless of the size of the image.
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SNR Calculation: SNR is calculated by dividing the signal power by the noise power. So, SNR = Signal Power / Noise Power.
Based on these factors, we can conclude that as the image diameter increases, the signal power increases, while the noise power remains constant. Therefore, the SNR will increase with an increase in the image diameter.
However, it's important to note that this tradebook assumes that the noise power remains constant and that the signal power is directly proportional to the image diameter. In practical scenarios, there might be other factors that can affect the SNR, such as sensor noise, transmission losses, or other sources of noise.
If you have any further questions or need more specific information, please let me know!
from architect.
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