METHOD AND SYSTEM FOR OBJECT RECOGNITION VIA A COMPUTER VISION APPLICATION
20200279383 ยท 2020-09-03
Inventors
Cpc classification
G06V10/255
PHYSICS
G06T7/521
PHYSICS
G06V10/22
PHYSICS
International classification
Abstract
A method and system for object recognition via a computer vision application including an object to be recognized, the object having an object specific luminescence spectral pattern, a light source including at least two illuminants for illuminating a scene including the object to be recognized by switching between the two illuminants, a sensor configured to capture radiance data of the scene including the object when the scene is illuminated by the light source, and a data storage unit storing fluorescence spectral patterns together with appropriately assigned respective objects. The method and system further include a data processing unit configured to extract the object specific fluorescence spectral pattern from the radiance data of the scene and to match the extracted object specific fluorescence spectral pattern with the fluorescence spectral patterns stored in the data storage unit, and to identify a best matching fluorescence spectral pattern and its assigned object.
Claims
1. A system for object recognition via a computer vision application, the system comprising at least the following components: an object to be recognized, the object having object specific reflectance and luminescence spectral patterns, a light source which is composed of at least two illuminants and is configured to illuminate a scene including the object to be recognized by switching between the at least two illuminants, wherein at least one of the at least two illuminants is based on at least one solid-state lighting system, a sensor which is configured to measure radiance data of the scene including the object when the scene is illuminated by the light source, a data storage unit which comprises luminescence spectral patterns together with appropriately assigned respective objects, a data processing unit which is configured to extract the object specific luminescence spectral pattern of the object to be recognized out of the radiance data of the scene and to match the extracted object specific luminescence spectral pattern with the luminescence spectral patterns stored in the data storage unit, and to identify a best matching luminescence spectral pattern and, thus, its assigned object.
2. The system according to claim 1, further comprising a display unit which is configured to display at least the identified object which is assigned to the identified best matching luminescence spectral pattern.
3. The system according to claim 1, wherein the object to be recognized is imparted with a predefined luminescence material and the resulting object's luminescence spectral pattern is known and used as a tag.
4. The system according to claim 1, wherein the at least one solid-state system is chosen from the group of solid-state systems comprising semiconductor light-emitting diodes (LEDs), organic light-emitting diodes (OLEDs), or polymer light-emitting diodes (PLEDs).
5. The system according to claim 1, wherein the data processing unit is configured to identify the best matching luminescence spectral pattern by using any number of matching algorithms between the extracted object specific luminescence spectral pattern and the stored luminescence spectral patterns, the matching algorithms being chosen from the group comprising at least: lowest root mean squared error, lowest mean absolute error, highest coefficient of determination, matching of maximum wavelength value.
6. The system according to claim 1, wherein the processing unit is configured to estimate, using the measured radiance data under the at least two illuminants, the luminescence spectral pattern and the reflective spectral pattern of the object to be recognized.
7. The system according to claim 1, wherein the sensor is a hyperspectral camera or a multispectral camera.
8. The system according to claim 1, wherein the sensor has one or more narrow bandpasses that correspond to Fraunhofer lines.
9. The system according claim 1, wherein the light source is a switchable light source with two illuminants each comprised of one or more LEDs and with a short switchover time between the two illuminants.
10. The system according to claim 1, wherein the sensor is synchronized to the switching of the light source to only measure at one time the radiance data from the scene under one of the at least two illuminants.
11. The system according to claim 1 wherein the sensor is synchronized to the light source and that the sensor tracks the illuminants'status during the sensor integration time.
12. The system according to claim 1 wherein the fluorescence spectral patterns of the objects which are stored in the data storage unit are coupled to information about the respective objects, particularly about type of material, price, manuals, and to other dynamic information of interest held at the data storage unit that is configured to track and update the information in 3D maps dynamically.
13. A method for object recognition via a computer vision application, the method comprising at least the following steps: providing an object with object specific reflectance and luminescence spectral patterns, the object is to be recognized illuminating a scene including the object with a light source which is composed of at least two illuminants, by switching between the at least two illuminants, wherein at least one of the two illuminants is based on at least one solid-state system, measuring, by means of a sensor, radiance data of the scene including the object when the scene is illuminated by the light source, providing a data storage unit with luminescence spectral patterns together with appropriately assigned respective objects, estimating, by a data processing unit, the object specific luminescence spectral pattern of the object to be recognized out of the radiance data of the scene, and matching, by the data processing unit, the estimated object specific luminescence spectral pattern with luminescence spectral patterns stored in the data storage unit, and identifying, by the data processing unit, a best matching luminescence spectral pattern and, thus, its assigned object.
14. The method according to claim 13, wherein the step of providing an object to be recognized comprises imparting the object with a luminescence material, thus providing the object with object specific reflectance and luminescence spectral patterns.
15. The method according to claim 13, further comprising the following step: displaying via a display device at least the identified object which is assigned to the identified best matching luminescence spectral pattern.
16. The method according to claim 13, wherein the matching step comprises to identify the best matching specific luminescence spectral pattern by using any number of matching algorithms between the estimated object specific luminescence spectral pattern and the stored luminescence spectral pattern, the matching algorithms being chosen from the group comprising at least: lowest root mean squared error, lowest mean absolute error, highest coefficient of determination, matching of maximum wavelength value.
17. The method according to claim 13, wherein the estimating step comprises to estimate, using the measured radiance data under the at least two illuminants, the luminescence spectral pattern and the reflective spectral pattern of the object in a multistep optimization process.
18. The method according to claim 13, wherein the light source is chosen as a switchable light source with two illuminants each comprised of one or more LEDs and with a short switchover time between the two illuminants.
19. A computer program product having instructions that are executable by a computer, the computer program product comprising instructions: to provide an object with object specific reflectance and luminescence spectral patterns, the object is to be recognized to illuminate a scene including the object with a light source which is composed of at least two illuminants, by switching between the at least two illuminants, wherein at least one of the two illuminants is based on at least one solid-state system, to measure, by means of a sensor, radiance data of the scene including the object when the scene is illuminated by the light source, to provide, by a data storage unit, luminescence spectral patterns together with appropriately assigned respective objects, to estimate, by a processing unit, the object specific luminescence spectral pattern of the object to be recognized out of the radiance data of the scene, and to match, by the processing unit, the estimated object specific luminescence spectral pattern with luminescence spectral patterns stored in the data storage unit, and to identify a best matching luminescence spectral pattern and, thus, its assigned object.
20. The computer program product according to claim 19 further comprising instructions: to display at least the identified object which is assigned to the identified best matching luminescence spectral pattern.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0081]
[0082]
[0083]
[0084]
[0085]
[0086]
[0087]
[0088]
[0089]
DETAILED DESCRIPTION
[0090]
[0091] The light source may be configured to illuminate a scene including the object 130 to be recognized by rapidly switching between the different illuminants (111, 112 and 113 in
[0092] The coated object 130 is illuminated with the light source 110 which is composed of multiple illuminants. The illuminants may be rapidly switched at a rate that is not visible to the human eyes and the illuminant changes managed by the proposed system through the network, working in sync with the integration times of the sensor 120. Generally, it is possible that multiple light sources connected to the network can be synced to have the same temporal and spectral change frequencies amplifying the effect. When the scene including the object 130 is illuminated by the light source 110 radiance data of the scene including the object 130 are captured/measured by the sensor 120. The data processing unit 140 estimates the object specific reflectance and/or fluorescence spectral pattern out of the radiance data of the scene by first separating fluorescence and reflectance spectra of the object.
[0093] Multiple methods of separating fluorescence from reflectance are known. The method used in example 1 is described in Yinqiang Zheng, Imari Sato, and Yoichi Sato, Spectra Estimation of Fluorescent and Reflective Scenes by Using Ordinary Illuminates, ECCV 2014, Part V, LNCS 8693, pp. 188-202, 2014. The method described therein images a fluorescent material under three different broadband illuminants with a hyperspectral camera. This paper in incorporated by reference in full.
[0094] According to the present invention, using the measured radiance data under three different illuminants 111, 112, and 113 as shown in
[0095] Finally, the data processing unit 140 matches the estimated fluorescence spectral pattern with object-specific fluorescence spectral patterns stored in the data storage unit 150 and identifies the best matching fluorescence spectral pattern. Finally, the data processing unit 140 can read out from the data storage unit 150 by means of the identified best matching fluorescence spectral pattern the object which is linked to this best matching fluorescence spectral pattern and can display the object together with the fluorescence spectral pattern on the display unit 160.
[0096] The imager 120 can be a hyperspectral camera or a multispectral sensor. Instead of the two dozen or more individual sensor bands in a hyperspectral sensor, a multispectral sensor has approximately 4 to 20 sensor bands. Multispectral sensors can operate in snapshot mode, capturing an entire scene during a single exposure. In contrast, hyperspectral sensors typically operate in line scanning mode, meaning they cannot image the entire scene at one time. Additionally, multispectral sensors are much more economical than hyperspectral cameras. Multispectral sensors do not have the same spectral resolution as hyperspectral cameras, but they are sufficient to predict the material identification using the proposed method with appropriate matching algorithms. The sensor may also operate in a monochrome manner, with a mechanism to change the spectral region measured through time. The sensor may operate with narrow-band filters. This may be useful in outdoor conditions or other conditions with a solar lighting component when the narrow-band filters correspond to Fraunhofer lines, which are wavelengths missing from the solar spectrum due to elemental absorption within the sun. In this manner, the solar radiation, which may be overpowering compared to the artificial light source, can largely be excluded, allowing for the separation of reflectance and fluorescence and therefore object identification.
[0097] The fluorescent object 130 was imaged under the different illuminants, 111, 112, and 113 for example 1 as indicated in
[0098] The method used to separate fluorescence from reflectance used in example 2 is in the paper of Fu et al. Separating Reflective and Fluorescent Compenents Using High Frequency Illumination in the Spectral Domain, ICCV 2013. As applied in their paper, the method requires customizable light source (Nikon ELS-VIS) capable of outputting a sinusoidal-like spectrum. The customizable light source is low powered and expensive, preventing widespread use or use in typically sized scenes. Surprisingly, it has been found here that the light source can be replaced with inexpensive and high-powered LEDs despite current LED technology being unable to create as narrow of emission bands as the Nikon ELS-VIS. The hyperspectral images were recorded in the same manner as Example 1 and rebinned to 10 nm intervals. Wavelengths at which both LED illuminants 114, 115 have similar radiances are omitted due to the nature of the calculation. The calculated/estimated emission results were compared with the fluorescence emission measured for each material using a fluorescence spectrophotometer. To facilitate easy comparison, the measured emission spectrum was also rebinned to the same 10 nm intervals and the same wavelengths omitted.
[0099] For achieving the calculated/estimated emission results, a simple algorithm is applied to the measured radiance data at each wavelength under each illuminant of the two LED illuminants 114, 115 and thus allows for separation of the reflectance and fluorescence emission spectra to be captured.
[0100] Since reflection and fluorescence have different physical behaviours, they need to be described by different models. The radiance of a reflected surface depends on the incident light and its reflectance. Using the nomenclature of the above mentioned paper Fu et al., the observed radiance of an ordinary reflected surface at a wavelength is computed as
p.sub.r()=l().Math.r()(1)
where l() is the spectrum of the incident light at wavelength and r() is the spectral reflectance of the surface at wavelength .
[0101] The observed radiance of a pure fluorescent surface depends on the incident light, the material's absorption spectrum, and its emission spectrum. Fluorescence typically absorbs light at some wavelengths and emits them at longer wavelengths. The surface's absorption spectrum will determine how much of the light is absorbed. Some of the absorbed energy is then released in the form of an emission spectrum at longer wavelengths than the incident light. The remainder of the absorbed energy is released as heat. The observed spectrum of pure fluorescent surface at wavelength is described in terms of its absorption and emission spectra as
p.sub.f(l()a()d)e()(2)
where a()and e() represent the absorption and emission spectrum. With k=I()a()d ), p.sub.f() can be written as p.sub.f()=ke() which means that the shape or the distribution of the emitted spectrum is constant but the scale k of the emitted spectrum changes under different illuminations. Namely, the radiance of the fluorescent emission changes under different illuminations, but its colour stays the same regardless of illumination colour. Finally, the reflective and fluorescent surface shows a radiance according to:
p()=l().Math.r()+ke()(3)
[0102] When using, as proposed according to the proposed method, high frequency sinusoidal illuminance in the spectral domain, the radiance of the object under these two sinusoidal illuminants can be described as:
p.sub.1()=l.sub.1()r()+ke()
p.sub.2()=l.sub.2()r()+ke()(4)
[0103] Therefrom, the reflectance r() and the fluorescent emission ke() can be recovered as
[0104] By means of the above described equations it is possible to calculate from the radiance data p() and the intensity I() from the illuminants the reflectance r() and the fluorescent emission e() of the object which has been illuminated by the light source. Thereby, the fluorescent emission corresponds to the object specific fluorescence spectral pattern of the object. The calculated object specific fluorescence spectral pattern is then compared with the fluorescence spectral patterns which are stored in the database and linked with respective specific objects.
[0105]
[0106]
[0107]
[0108]
[0109]
[0110]
[0111]
[0112]