Detecting Items Hidden Inside a Body

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Journal for Research Volume 01 Issue 12 February 2016 ISSN: 2395-7549 Detecting Items Hidden Inside a Body Mr. Sanjay Nag Research Scholar Department of Computer Science & Engineering University of Calcutta Ms. Nabanita Basu Research Scholar Department of Computer Science & Engineering University of Calcutta Prof.(Dr.) Samir Kumar Bandyopadhyay Professor Department of Computer Science & Engineering University of Calcutta Abstract People sometimes hide contraband inside body cavities. For instance, prison inmates and visitors may hide money or cell phones this way. Smugglers may carry drugs, and terrorists may conceal explosives inside the body. The paper proposed a method for detecting hidden item inside human body. It can detect both metal and non-metal objects and display them as images on a video screen. Keywords: Concealed Weapon Detection, Color image, and IR image I. INTRODUCTION A weapon is any object that can do harm to another individual or group of individuals. This definition not only includes objects typically thought of as weapons, such as knives and firearms, but also explosives, chemicals, etc. so this harmful things need to be detect for securing general public as well as public assets like airports and buildings etc. Already used manual screening procedure sometimes gives wrong alarm indication, and fails when the object is not in the range of security personnel as well as when it is impossible to manage the flow of people through a controlled procedure. It also disappoints us when we try to identify a person who is the victim of an accident in future. We have recently witnessed the series of bomb blasts in Mumbai, Delhi, and Guwahati etc. Bombs went off in buses and underground stations. And killed many and left many injured and left the world in shell shock and the Indians in terror. This situation is not limited to India but it can happen or already happened anywhere and anytime in the world. People think bomb blasts can t be predicted before handled. In all of these cases CWD by scanning the images gives satisfactory results. But no single sensor technology can provide acceptable performance. So we try to bring the eventual deployment of automatic detection and recognition of concealed weapons. It is a technological challenge that requires innovative solutions in sensor technologies and image processing. The problem also presents challenges in the legal arena; a number of sensors based on different phenomenology as well as image processing support are being developed to observe objects underneath people s clothing. Now image fusion has been identified as a key technology to achieve improved CWD procedures. In our current work we focus on fusing visual and low cost IR images for CWD. Infrared images are depends on the temperature distribution information of the target to form an image. Usually the theory follows here is that the infrared radiation emitted by the human body is absorbed by clothing and then re-emitted by it. In the IR image the background is almost black with little detail because of the high thermal emissivity of body. The weapon is darker than the surrounding body due to a temperature difference between it and the body (it is colder than human body). The visual image is a mental image that is similar to a visual perception. The resolution in the visual image is much higher than that of the IR image. It is nothing but a RGB image that supports human visual perception. But there is no useful information on the concealed weapon in the visual image. The human visual system is very sensitive to colours. To utilize this ability if we apply this image with other image in fusion technique we get a better fused image that helps for detection. People sometimes hide contraband inside body cavities. For instance, prison inmates and visitors may hide money or cell phones this way. Smugglers may carry drugs, and terrorists may conceal explosives inside the body. A weapon is any object that can do harm to another individual or group of individuals. This definition not only includes objects typically thought of as weapons, such as knives and firearms, but also explosives, chemicals, etc. Contraband items include illegal drugs and any other item that is controlled or forbidden by a particular law enforcement or corrections agency. Consequently, contraband may include tobacco, any metallic object that can be used to defeat security constraints, drug paraphernalia, etc. For the computer to recognize a specific weapon or threat item, the computer will have to compare the threat item with an electronic catalog of images of uniquely-shaped threat items, and this includes images for all possible unique orientations for each unique threat item. Only catalogued images of uniquely-shaped threat items are required for comparison because no new information is obtained if a catalogued image is only a scaled replica of another catalogued image. Unique orientations, on the other hand, are important because a weapon may have a significantly different appearance if viewed from the sides, the top, etc. All rights reserved by www.journalforresearch.org 1

Concealed weapons can be detected through various techniques which are Image Processing, Active and Passive millimeter - wave sensors, Phased Antenna array, and explosives can be detected through Signal Processing and Pattern Recognition. For the perfect effectiveness and visualization, image processing methods are generally opting. II. REVIEW WORKS Imaging techniques based on a combination of sensor technologies and processing will potentially play a key role in addressing the concealed weapon detection problem. One critical issue is the challenge of performing detection at a distance with high probability of detection and low probability of false alarm. Yet another difficulty to be surmounted is forging portable multisensory instruments. Also, detection systems go hand in hand with subsequent response by the operator, and system development should take into account the overall context of deployment [1]. Concealed Weapon using the radar image are proposed by Yu-Wen Chang ET all [2, 3] in which drawbacks such as glint and specular reflection or artifacts such as coherent interference these problems should be able to be overcome. There are many layers in processing of image which scan out the real picture of concealed material. Sensors are also very effective for the security. It helps to complete the aim of detection of weapons, explosive, chemical threats. A pulse synthesized, time domain approach relaying on Stepped Frequency Continuous Wave (SFCW) radar implemented in a phased array of antenna is proposed. Both the location of items (that support appreciable induced surface currents) concealed on the human body and the nature of these concealed item [3]. In order to detect contraband, it is important to understand their characteristics. Gozani lists the properties that are of greatest interest in identifying both drugs and explosives. For examples, drugs have following constitutes: carbon (high), oxygen (low), chlorine (moderate), and density (moderate). On the other hand for the explosives we get: carbon (moderate), nitrogen (high/moderate), oxygen (very high/ high) and density (very high). Nitrogen based explosives, rich in nitrogen (bonding agent) and oxygen (oxidizing agent) are commonly used due to their high power. The explosives also contain carbon and sometimes hydrogen as fuel. Usually, explosive device consist of two main components: an explosive agent and a detonating system. The blasting material consists primarily of inorganic nitrates and carbonaceous fuels and detonators are made of metallic tubes or shells with an initiating explosive. In case of plastic explosives, they can self -detonate due to their unstable nature. There are more than one hundred types of military and civilian explosives and around twenty commonly used drugs. A number of explosives characteristics can be used for their detection [4]. A new algorithms proposed by Zhiyun Xue et all[6] in which fuse a color visual image and a corresponding IR image for such a concealed weapon detection application in which they have great success. So fusion is an important step, we use here DWT fusion, some more improve method are there such as Chu-Hui Lee et all[13] produce a easy applications to adjust for anytime, and anywhere you like, make sure that may work and take a photograph nicely. The DWT fusion methods provide computationally ancient image fusion techniques various fusion rules for the selection and combination of sub band coefficients increase the quality perceptual and quantitatively measurable of image fusion in specific applications. For binaries the fused image there are several method[8-10] Otsu method are chosen because this method are global method and effective for this type of image. The concept of small area removal is taken from [11-14]. However, based on biological research results, the human visual system is very sensitive to colours. To utilize this ability, some researchers map three individual monochrome multispectral images to the respective channels of an RGB image to produce a false color fused image. In many cases, this technique is applied in combination with another image fusion procedure. Such a technique is sometimes called color composite fusion. we present a new technique to fuse a color visual image with a corresponding IR image for a CWD application. III. PROPOSED METHOD In our proposed technique for CWD we consider two types of image a visual image and an IR image. Visual image is nothing but an RGB image which has three main colour components Red, Green and Blue. Since the human visual system is very sensitive to colours this image creates a natural perception of an object to human vision but not helps so much in the detection of concealed weapon. For this we consider IR image as second input. It basically depends on high thermal emissivity of the body. Basically the infrared radiation emitted by the body is absorbed by clothing and then re-emitted by it, is sensed by the infrared sensors. Due to difference in thermal emissivity we can realize the hidden object but since the background is almost black this image cannot help in CWD alone. The prosed algorithm is given below. Algorithm for Detecting Concealed Weapon: Input: X Ray Image Output: Identification of Concealed weapon 1) Step1: Read the input color or grayscale image. 2) Step2: Converts input colour image in to grayscale image which is done by forming a weighted sum of each three (RGB) component, eliminating the saturation and hue information while retaining the luminance and the image returns a grayscale colour map. 3) Step3: Resize this image in to 200 200 image matrix. All rights reserved by www.journalforresearch.org 2

4) Step4: Filters the multidimensional array with the multidimensional filter. Each element of the output an integer or in array, then output elements that exceed the certain range of the integer type is shortened, and fractional values are rounded. 5) Step5: Add step2, step4 image and an integer value 45 and pass it in to a median filter to get the resultant enhanced image. 6) Step6: Computes a global threshold that can be used to convert an intensity image (Step5) to a binary image with a normalized intensity value which lies in between range 0 and 1. 7) Step7: Compute watershed segmentation by mat lab command watershed (step6 image). 8) Step8: Compute the morphological operation by two mat lab command imerode and imdilate and strel with arbitrary shape. 9) Step9: Store the size of the step 8 image into var1 and var2 i.e no. Of rows and column in pixels by[var1 var2]=size(step8 image) 10) Step10: For i=1:1:var1 do 11) Step11: For j=1:1:var2 do 12) Step12: If step8 image (i,j) == 1 do 13) Step13: step2 image (i,j) = 255 14) Step14: Else do 15) Step15: step2 image (i,j) = step2 image (i,j) * 0.3 16) Step16: End If 17) Step17: End For 18) Step18: End For 19) Step19: Convert in to binary image and traces the exterior boundaries of objects, as well as boundaries of holes inside these objects, in the binary image and into an RGB color image for the purpose of visualizing labeled regions. 20) Step20: Show only tumor portion of the image by remove the small object area. 21) Step21: Compute edge detection using sobel edge detection technique. /*Algorithm for Area Calculation of Concealed Weapon*/ 22) Step22:- Read the input color or grayscale image. 23) Step23:- Converts input colour image in to grayscale image which is done by forming a weighted sum of each three (RGB) component, eliminating the saturation and hue information while retaining the luminance and the image returns a grayscale colour map and store it into variable I. 24) Step24:- Compute numbers of rows and column in pixels by [r2 c2] = size (I) 25) Step25:- Initialize a variable A=0 For i=1:1:r2 Do Step4:- For j=1:1:c2 Do If I (i,j)==255 Do A=A+0 Else Do A=A+1 End IF End For End For 26) Step 26:-Display the area A and store the value in buffer for future processing. 27) Step 27: Take a visual image (basically, RGB image) and an infrared (IR) image as input from Disk 28) Step 28: Resize this two image so that they have same size. 29) Step 29: Combine i.e. add resized Visual and IR image. 30) Step 30: Complement the IR image. 31) Step 31: Combine i.e. add resized Visual image and complemented IR image. 32) Step 32: Convert the visual RGB image to its HSV format. 33) Step 33: Perform DWT fusion on Step 5 s combined image and Step 6 s converted HSV image. 34) Step 34: Convert the fused image into its gray scale format. 35) Step 35: Binarize the Fused image. 36) Step 36: Detect the weapon from that image. It is a technique of fusing the visual and IR image after registration. We find that the body is brighter than the background in the IR image. Also background is almost black and gives little details because of the high thermal emissivity of body. Also weapon is darker than the surrounding body due to a temperature difference between it and the body (it is colder than human body). The resolution in the visual image is much higher than that of the IR image, but there is no information on the weapon in the visual image. It is shown in Figure 1. All rights reserved by www.journalforresearch.org 3

a) Visual image b) IR image c) Fused image with visible weapon d) Detected image with weapon highlighted Fig. 1: Concealed weapon detection Fig. 2: RGB image Fig. 3: IR image Fig. 4: Gray image Fig. 5: Combined image Fig. 6: Complemented IR Fig. 7: Combined1 image Fig. 8: HSV image Fig. 9: Fused image Fig. 10: Fused Gray Image Fig. 11: Weapon in binary image Fig. 12: Weapon in visual image Fig. 13: Contour of the Weapon image Two images in the same pose visual RGB image and IR image are shown in figure 2 and figure 3. Resize these two types of image because image fusion and addition are not able to perform if the sizes are not same. Combine basically add visual image and IR image and the result is shown in figure 4. All rights reserved by www.journalforresearch.org 4

Actually we want to detect the hiding details from figure 5 but image from figure 4 is hazy, so we do not get enough information from figure4. Complement the IR image which is use full in the next operation and this complement image is shown in figure 6. IR image lies the intensity between 0 to 255 intensity thus complement means subtracting all matrix component from 255 and we get complemented form or reverse form of the IR image. Then add visual image and complemented IR image which is shown in figure 7. We do these steps because in this step difference between hiding details and man are recognizable. Then we convert IR image into HSV colour model and it is shown in figure8 because components of IR image are all correlated with the amount of light hitting the object, and therefore with each other, image descriptions in terms of those components make object discrimination difficult. Descriptions in terms of hue/lightness/saturation are often more relevant. After converting HSV model the image is now three components. Now we can use fusion technique because two images have the same dimension with same size. Then we use DWT fusion technique between HSV color image and combined image is shown in figure 9. The discrete wavelet transform DWT is a spatial frequency decomposition that provides a flexible multi resolution analysis of an image. In wavelet transformation due to sampling, the image size is halved in both spatial directions at each level of decomposition process thus leading to a multi1resolution signal representation. The advantages of image fusion over visual comparison of multi-modality are: (a) the fusion technique is useful to correct for variability in orientation, position and dimension; (b) it allows precise anatomic1physiologic correlation; and (c) it permits regional quantisation. Many image processing like de-noising, contrast enhancement, edge detection, segmentation, texture analysis and compression can be easily and successfully performed in the wavelet domain. Wavelet techniques thus provide a powerful set of tools for image enhancement and analysis together with a common framework for various fusion tasks. Applying fusion technique image sharpness and contrast enhanced. Then this fused image converted into gray scale image is shown in figure 9. This steps is required for the next step in which we use a binarization technique. There are several binarization techniques among them Otsu, Bernsen, savala, th-mean, niblack and iterative partitioning as a framework method are showing good result for this type of image. Here we use Otsu method which is a global Thresholding method i.e threshold value are calculated locally and get the result, no extra threshold value is added here. Extract this weapon portion by calculating all connected area component then remove too small component according to the area values. This only weapon portion binary image is shown in figure 10. Let us we want to show the weapon in the actual RGB visual image. The weapon binary images are stored into three different components because we want multiply it with three dimensional RGB image. Multiply individual element to element between two matrixes. In this step we detect weapon with visual RGB image is shown in figure 11. Contour detection is used to detect edges of weapon from the weapon binary image. Edge detection refers to the process of identifying and locating sharp discontinuities in an image. The discontinuities are abrupt changes in pixel intensity which characterize boundaries of objects in a scene. There is an extremely large number of edge detection operators available, each designed to be sensitive to certain types of edges. Here we use canny edge detection techniques. The Canny edge detection algorithm is known to many as the optimal edge detector. Canny s edge detection algorithm is computationally more expensive compared to Sobel, Prewitt and Robert s operator. However, the Canny s edge detection algorithm performs better than all these operators under almost all scenarios. This contour detection of concealed weapon is shown in figure 12. Then this binarizes contour image are divided into three component and multiply as before and get contour with visual RGB image which is shown in figure 13 where we can see the concealed weapon under person clothes easily. IV. CONCLUSION In this paper we introduce a color image fusion technique for CWD where we fuse a visual RGB image and IR image. We can able to detect the weapon concealed under person s clothes and bags. But infrared radiation can be used to show the image of a concealed weapon only when the clothing is tight, thin, and stationary. For normally loose clothing, the emitted infrared radiation will be spread over a larger clothing area, thus decreasing the ability to image a weapon. REFERENCES [1] Hua-Mei Chen, Seungsin Lee, Raghuveer M. Rao, Mohamed-Adel Slamani, and Pramod K. Varshney. : A tutorial overview of development in imaging sensors and processing. IEEE SIGNAL PROCESSING MAGAZINE, pp.52-61, MARCH 2005. [2] Yu-Wen Chang ; Michael Johnson. : Portable Concealed Weapon Detection Using Millimeter Wave FMCW Radar Imaging. Federal funds provided by the U.S. Department of Justice August 30, 2001. [3] Z. Xue, R. S. Blum, and Y. Li. : Fusion of Visual and IR Images for Concealed Weapon Detection1. U. S. Army Research Office under grant number DAAD19-00-1-0431, pp 1198-1205. [4] Sudipta Roy and Prof. Samir K. Bandyopadhyay. : Visual Image Based Hand Recognitions. Asian JournalOf Computer Science And Information Technolog(AJCSIT)y1:4 (2011), pp.106 110. http://innovativejournal.in/index.php/ajcsit/article/view/94 [5] Mohamed-Adel Slamani, Pramod K. Varshney, David D. Ferris. : Survey of Image Processing Techniques Applied to the Enhancement and Detection of Weapons in MMW Data. SPIE Vol. 4719 (2002). [6] Zhiyun Xue, Rick S. Blum. : Concealed Weapon Detection Using Color Image Fusion. ISIF, pp-622-627,2003. [7] R. C. Gonzalez, R. E. Woods. : Digital Image Processing. Second Edition, Prentice Hall, New Jersey 2002. [8] Otsu, N.: A threshold selection method from gray-level histogram. IEEE Trans. Syst. Man Cybern. 9, 62 66 (1979) [9] Niblack,W.: An Introduction to Digital Image Processing. pp. 115 116. Prentice Hall, Eaglewood Cliffs (1986) [10] Sauvola, J., Pietikainen, M.: Adaptive document image binarization. Pattern Recogn. 33(2), 225 236 (2000) All rights reserved by www.journalforresearch.org 5

[11] Manjusha Deshmukh, Udhav Bhosale.: Image Fusion and Image Quality Assessment of Fused Images. International Journal of Image Processing (IJIP), pp. 484-508, Volume (4): Issue (5). [12] M. Aguilar, and J. R. New. : Fusion of multi-modality volumetric medical imagery. ISIF 2002, pp. 1206-1212. [13] Sudipta Roy, Prof. Samir K. Bandyopadhyay, Contour Detection of Human Knee, International Journal of Computer Science Engineering and Technology (IJCSET),September 2011, Vol 1, Issue 8,pp. 484-487. [14] Chu-Hui Lee and Zheng-Wei Zhou. : Comparison of Image Fusion based on DCT-STD and DWT-STD. Proceedings of the International Multiconference of Engineers and computer scientists 2012, vol me, IMECS 2012, Hong Kong. All rights reserved by www.journalforresearch.org 6