7 research outputs found
Texture identification using artificial neural networks and 2D-Autoregressive Model
As an important aspect of image analysis, texture identification has been pursued by many researchers. Among techniques developed, the approach of modeling texture images through a 2-D Autoregressive (AR) Model is of special interest. The major problem with the modeling methods is the estimation of parameters due to the intensive amount of computation involved. From a parallel computing perspective, parameter estimation can be implemented by learning procedure of a neural network, and texture classification can be mapped into a neural computation. A multilayer network is proposed which consists of three subnets, namely the input subnet (ISN), the analysis subnet (ASN) and the classification subnet (CSN). The network obtains the classification capability through an adaptive learning proceedure. In the processing phase, images proceed through the network without the preprocessing and feature extraction required by many other techniques.
An integrated texture segmentation technique is proposed to segment textured images. The technique is implemented by comparing local region properties, which are represented by a 2-D AR model, in a hierarchical manner. It is able to grow all regions in a textured image simultaneously starting from initially decided internal regions until smooth boundaries are formed between all adjacent regions. The performances of the classification and segmentation techniques are shown by experiments on natural textured images
Quantification of tumour heterogenity in MRI
Cancer is the leading cause of death that touches us all, either directly or indirectly.
It is estimated that the number of newly diagnosed cases in the Netherlands will increase
to 123,000 by the year 2020. General Dutch statistics are similar to those in
the UK, i.e. over the last ten years, the age-standardised incidence rate1 has stabilised
at around 355 females and 415 males per 100,000. Figure 1 shows the cancer incidence
per gender. In the UK, the rise in lifetime risk of cancer is more than one in three and depends on many factors, including age, lifestyle and genetic makeup
Shuttle landing facility cloud cover study: Climatological analysis and two tenths cloud cover rule evaluation
The two-tenths cloud cover rule in effect for all End Of Mission (EOM) STS landings at the Kennedy Space Center (KSC) states: 'for scattered cloud layers below 10,000 feet, cloud cover must be observed to be less than or equal to 0.2 at the de-orbit burn go/no-go decision time (approximately 90 minutes before landing time)'. This rule was designed to protect against a ceiling (below 10,000 feet) developing unexpectedly within the next 90 minutes (i.e., after the de-orbit burn decision and before landing). The Applied Meteorological Unit (AMU) developed and analyzed a database of cloud cover amounts and weather conditions at the Shuttle Landing Facility for a five-year (1986-1990) period. The data indicate the best time to land the shuttle at KSC is during the summer while the worst time is during the winter. The analysis also shows the highest frequency of landing opportunities occurs for the 0100-0600 UTC and 1300-1600 UTC time periods. The worst time of the day to land a shuttle is near sunrise and during the afternoon. An evaluation of the two-tenths cloud cover rule for most data categorizations has shown that there is a significant difference in the proportions of weather violations one and two hours subsequent to initial conditions of 0.2 and 0.3 cloud cover. However, for May, Oct., 700 mb northerly wind category, 1500 UTC category, and 1600 UTC category there is some evidence that the 0.2 cloud cover rule may be overly conservative. This possibility requires further investigation. As a result of these analyses, the AMU developed nomograms to help the Spaceflight Meteorological Group (SMG) and the Cape Canaveral Forecast Facility (CCFF) forecast cloud cover for EOM and Return to Launch Site (RTLS) at KSC. Future work will include updating the two tenths database, further analysis of the data for several categorizations, and developing a proof of concept artificial neural network to provide forecast guidance of weather constraint violations for shuttle landings
Review of Back Propagation Neural Networks and Tradidonal Statistical Methods
Occupational and Adult Educatio
Intelligent X-ray imaging inspection system for the food industry.
The inspection process of a product is an important stage of a modern
production factory. This research presents a generic X-ray imaging inspection system
with application for the detection of foreign bodies in a meat product for the food
industry. The most important modules in the system are the image processing module
and the high-level detection system.
This research discusses the use of neural networks for image processing and
fuzzy-logic for the detection of potential foreign bodies found in x-ray images of
chicken breast meat after the de-boning process. The meat product is passed under a
solid-state x-ray sensor that acquires a dual-band two-dimensional image of the meat (a
low- and a high energy image). A series of image processing operations are applied to
the acquired image (pre-processing, noise removal, contrast enhancement). The most
important step of the image processing is the segmentation of the image into meaningful
objects. The segmentation task is a difficult one due to the lack of clarity of the acquired
X-ray images and the resulting segmented image represents not only correctly identified
foreign bodies but also areas caused by overlapping muscle regions in the meat which
appear very similar to foreign bodies in the resulting x-ray image. A Hopfield neural
network architecture was proposed for the segmentation of a X-ray dual-band image. A
number of image processing measurements were made on each object (geometrical and
grey-level based statistical features) and these features were used as the input into a
fuzzy logic based high-level detection system whose function was to differentiate
between bones and non-bone segmented regions. The results show that system's
performance is considerably improved over non-fuzzy or crisp methods. Possible noise
affecting the system is also investigated.
The proposed system proved to be robust and flexible while achieving a high
level of performance. Furthermore, it is possible to use the same approach when
analysing images from other applications areas from the automotive industry to
medicine
Intelligent X-ray imaging inspection system for the food industry.
The inspection process of a product is an important stage of a modern
production factory. This research presents a generic X-ray imaging inspection system
with application for the detection of foreign bodies in a meat product for the food
industry. The most important modules in the system are the image processing module
and the high-level detection system.
This research discusses the use of neural networks for image processing and
fuzzy-logic for the detection of potential foreign bodies found in x-ray images of
chicken breast meat after the de-boning process. The meat product is passed under a
solid-state x-ray sensor that acquires a dual-band two-dimensional image of the meat (a
low- and a high energy image). A series of image processing operations are applied to
the acquired image (pre-processing, noise removal, contrast enhancement). The most
important step of the image processing is the segmentation of the image into meaningful
objects. The segmentation task is a difficult one due to the lack of clarity of the acquired
X-ray images and the resulting segmented image represents not only correctly identified
foreign bodies but also areas caused by overlapping muscle regions in the meat which
appear very similar to foreign bodies in the resulting x-ray image. A Hopfield neural
network architecture was proposed for the segmentation of a X-ray dual-band image. A
number of image processing measurements were made on each object (geometrical and
grey-level based statistical features) and these features were used as the input into a
fuzzy logic based high-level detection system whose function was to differentiate
between bones and non-bone segmented regions. The results show that system's
performance is considerably improved over non-fuzzy or crisp methods. Possible noise
affecting the system is also investigated.
The proposed system proved to be robust and flexible while achieving a high
level of performance. Furthermore, it is possible to use the same approach when
analysing images from other applications areas from the automotive industry to
medicine