Sign In

Register

Retrieve password


Hyperspectral Camera Q&A | SIMTRUM Photonics Store

How Hyperspectral and Multi-spectral Camera work and there key specification

2023-05-26

1. What is a hyperspectral camera and how does it work?

2. What is the difference between snapshot and lines can hyperspectral camera?

3. What are the differences between hyperspectral and multi-spectral camera cameras?

4. What is spectral resolution?

5. What is spatial resolution? 

6. What does smile means in hyperspectral camera? 

7. What does keystone mean in hyperspectral?



1. What is a hyperspectral camera and how does it work?

The main principle behind a hyperspectral camera is spectroscopy, which involves the measurement and analysis of light intensity at different wavelengths. By capturing a series of images at numerous narrow and contiguous spectral bands, hyperspectral cameras can gather detailed information about the spectral properties of the scene or object being observed.


The data collected by a hyperspectral camera is known as a hyperspectral image or data cube. Each pixel in the image contains a complete spectrum of the reflected or emitted light from the corresponding point in the scene. 


Applications of hyperspectral cameras are diverse and span various fields, including remote sensing, agriculture, environmental monitoring, mineralogy, geology, defense and security, medicine, and industrial inspection. 


2. What is the difference between snapshot and lines can hyperspectral camera?

The main difference between a snapshot hyperspectral camera and a line scan hyperspectral camera lies in their methods of capturing hyperspectral data. Here's a comparison of the two:

Typical (hyper)spectral imaging approached. (A) Point scan. (B) Line scan (i.e. "pushbroom"). (C) Wavelength scan. (D) Snapshot.


Snapshot Hyperspectral Camera:

● Capture Method: Snapshot hyperspectral cameras capture the entire hyperspectral image in a single exposure or snapshot. They capture both spatial and spectral information simultaneously.

● Sensor Array: Snapshot hyperspectral cameras use a two-dimensional sensor array with rows and columns of pixels. And most common sensor used is high resolution CMOS camera that cover the wavelength range from 200-1100nm. 

● Spectral Sampling: These cameras typically use an array of spectral filters to sample multiple wavelengths simultaneously. Each pixel in the sensor array captures light at a different wavelength, allowing for parallel acquisition of spectral information.

● Spatial Resolution: Snapshot hyperspectral cameras provide high spatial resolution, as they capture the entire scene at once.

● Advantages: Small and Portable, Faster capture speed, no moving mechanism is needed.

● Disadvantage:  Most Snapshot hyperspectral cameras can only cover 200-1000nm wavelength range, higher cost in compare to line scan Camera at same wavelength range.


Line scan Hyperspectral Camera:

● Capture Method: Lines can hyperspectral cameras capture hyperspectral data in a sequential manner, one line at a time, as the scene moves past the camera's field of view. 

● Sensor Array: Line scan hyperspectral cameras use a two-dimensional sensor array with rows and columns of pixels. The columns will be used to capture the spectral information and the rows will be used to capture the spatial information.   

● Scanning Mechanism: These cameras require relative motion between the scene and the camera to capture the complete hyperspectral image. This can be achieved by moving the camera platform or using a moving conveyor belt.

● Spectral Dispersion:  line scan cameras use a dispersive element to disperse the incoming light into its constituent wavelengths before it reaches the sensor array.

● Advantages:  able to cover wavelength range from UV to LWIR, Lower Cost, 

● Disadvantages: Moving mechanism is needed


3. What are the differences between hyperspectral and multi-spectral camera cameras?

The main difference between hyperspectral cameras and multispectral cameras lies in the number and width of the spectral bands they capture, as well as the level of spectral detail they provide. Here's a comparison of the two:


Spectral Bands:

Hyperspectral cameras capture a large number of narrow and contiguous spectral bands across a large spectrum range UV to LWIR. They typically capture tens to hundreds of spectral bands, 


Multispectral cameras capture a smaller portion of spectral bands compared to hyperspectral cameras. They typically capture a few to several spectral bands across the visible and/or near-infrared spectrum. 


Spectral Detail:

Hyperspectral cameras offer fine spectral detail, allowing for precise identification and analysis of specific materials or spectral signatures.  multispectral cameras provide less spectral detail compared to hyperspectral cameras,


Cost:

Usually, hyperspectral cameras are more expensive than multi-spectral cameras.  If you are only interested in certain wavelength bands in VIS to NIR range multi-spectral camera is a better choice. 



4. What is spectral resolution?

Spectral resolution refers to the ability of a spectroscopic or imaging system to distinguish or resolve fine details in the spectral domain. It indicates the smallest wavelength interval or difference that the system can detect or distinguish as separate spectral features.


Spectral resolution is typically measured in units of wavelength, such as nanometers (nm) or wavenumbers (cm^-1), and is determined by various factors, including the optical design, detector characteristics, and the method of spectral dispersion employed by the system.


In spectroscopy, spectral resolution is often characterized by the full width at half maximum (FWHM) of the spectral peaks or lines. It represents the width of the spectral feature at half of its maximum intensity and is a common metric for quantifying spectral resolution. Smaller FWHM values indicate higher spectral resolution, as they correspond to narrower spectral features that can be resolved and distinguished.


In the context of hyperspectral imaging, spectral resolution refers to the size or width of the individual spectral bands or channels captured by the imaging system. Higher spectral resolution in a hyperspectral camera means narrower spectral bands, allowing for finer discrimination between different wavelengths or spectral features. Conversely, lower spectral resolution corresponds to wider spectral bands, resulting in reduced ability to distinguish between closely spaced spectral information.


It is worth noting that spectral resolution is distinct from spatial resolution, which refers to the level of detail in capturing spatial information or resolving fine details in the physical structure or features within an image or scene. Spectral resolution relates specifically to the precision and capability of a system in the spectral domain.


5. What is spatial resolution? 

Spatial resolution refers to the level of detail or granularity in capturing the spatial features or structure of an image or scene. It quantifies the ability of an imaging system to distinguish and resolve fine details or closely spaced objects within the image.


Spatial resolution is typically measured in terms of spatial sampling or the size of the smallest discernible feature in the image. It is influenced by factors such as the optics, sensor size, pixel density, and imaging technique used by the system.


In imaging systems, spatial resolution is often characterized by the number of pixels per unit area or the size of the individual pixels. Higher spatial resolution means smaller pixel size or greater pixel density, enabling the system to capture fine details and smaller objects in the image. Conversely, lower spatial resolution corresponds to larger pixel size or lower pixel density, resulting in reduced ability to resolve fine details and distinguish smaller objects.


6. What does smile means in hyperspectral camera? 

"Smile" refers to an optical distortion that can occur in the captured spectral data. SMILE is an acronym for Spectral Misregistration and Smile, where "smile" specifically refers to the spatial misalignment of spectral bands.


When a hyperspectral camera captures an image, it does so by splitting the incoming light into different spectral bands, each spectral band is then captured by a specific area on the camera sensor. However, due to various factors such as optical imperfections, mechanical misalignments, or temperature variations, the different spectral bands may not align perfectly with each other in the spatial dimension.


As a result of this misalignment, the spectral bands may exhibit a slight spatial shift or curvature, resembling a smile-shaped distortion across the image. This spatial misregistration can cause inaccurate spectral information when analyzing the data, as the spectral content may not be correctly aligned with the spatial features.


The smile effect can lead to issues in hyperspectral data analysis, including reduced spectral accuracy, misinterpretation of spectral features, and difficulties in hyperspectral image fusion or registration with other data sources.



7. What does keystone mean in hyperspectral?

Keystone refers to an optical distortion that can occur in the captured spectral data. Keystone distortion is a geometric aberration that causes a trapezoidal or keystone-shaped distortion in the image, where the top and bottom of the image are not parallel to each other.


Keystone distortion can be caused by various factors, including misalignment of optical components, mechanical stress, or misplacement of the camera or scene during image capture. This distortion affects the spatial relationship between different parts of the image, leading to inaccurate spatial representation.


In hyperspectral imaging, keystone distortion can be problematic as it can introduce errors in subsequent analysis and interpretation of the data. Distorted geometry can affect the accurate identification and characterization of objects, as their spatial features are not faithfully represented.