999精品在线视频,手机成人午夜在线视频,久久不卡国产精品无码,中日无码在线观看,成人av手机在线观看,日韩精品亚洲一区中文字幕,亚洲av无码人妻,四虎国产在线观看 ?

Computer Vision with Machine Learning Enabled Skin Lesion Classification Model

2022-11-10 02:30:02RomanyMansourSaraAlthubitiandFayadhAlenezi
Computers Materials&Continua 2022年10期

Romany F.Mansour,Sara A.Althubiti and Fayadh Alenezi

1Department of Mathematics,Faculty of Science,New Valley University,El-Kharga,72511,Egypt

2Department of Computer Science,College of Computer and Information Sciences,Majmaah University,Al-Majmaah,11952,Saudi Arabia

3Department of Electrical Engineering,College of Engineering,Jouf University,Sakaka,72388,Saudi Arabia

Abstract:Recently,computer vision(CV)based disease diagnosis models have been utilized in various areas of healthcare.At the same time,deep learning(DL) and machine learning (ML) models play a vital role in the healthcare sector for the effectual recognition of diseases using medical imaging tools.This study develops a novel computer vision with optimal machine learning enabled skin lesion detection and classification(CVOML-SLDC)model.The goal of the CVOML-SLDC model is to determine the appropriate class labels for the test dermoscopic images.Primarily,the CVOML-SLDC model derives a gaussian filtering(GF)approach to pre-process the input images and graph cut segmentation is applied.Besides,firefly algorithm(FFA)with EfficientNet based feature extraction module is applied for effectual derivation of feature vectors.Moreover,na?ve bayes (NB) classifier is utilized for the skin lesion detection and classification model.The application of FFA helps to effectually adjust the hyperparameter values of the EfficientNet model.The experimental analysis of the CVOML-SLDC model is performed using benchmark skin lesion dataset.The detailed comparative study of the CVOML-SLDC model reported the improved outcomes over the recent approaches with maximum accuracy of 94.83%.

Keywords:Skin lesion detection;dermoscopic images;machine learning;deep learning;graph cut segmentation;EfficientNet

1 Introduction

Melanoma is one of the most dangerous types of cancer which is incurable.In many of the turnover of the cases is mortality.Occasionally,melanoma growth begins from cancer with variations containing its itchiness,color,and size[1].Earlier lesion diagnosis increases the survival rate to 100%,whereas late detection turns into 59%survival rate and deep melanoma is bigger when compared to three millimeters[2].Generally,non-melanoma is a common light type of cancer when compared to melanoma,however,melanoma is the major cause of skin lesion death.Initially,detection of malignant melanoma might significantly reduce morbidity and mortality[3].During the early stages,detection of malignant melanoma might save millions rather than treatment procedure of that deadliest disease.In contrast with other types of cancer,the ratio of melanoma increases rapidly,viz.a rise of 6%per annum.Skin lesion localization and detection in the image are essential to estimate image features for lesion diagnoses[4].It is important to precisely determined the cancer boundary thus measurement of boundary irregularity,maximal diameter,and features of color might be precisely computed.In detecting skin lesions,initially,boundary of the cancer is marked by the image segmentation method.The texture discriminated and distributions of color against the texture color images.By using the classification method,skin lesions can be detected at earlier stage[5].

Due to the difference in skin texture and injury,detection of skin cancer is a complicated process.Consequently,dermatologist employs a non-invasive method called dermoscopy for detecting skin lesion at an earlier stage[6].The initial phase in dermoscopy is to employ the ointment to the diseased region.Next,a magnified image can be attained by utilizing a magnifying tool.The magnified image offers the best visualization to inspect the shape of the cancer region.The recognition performance is based on expert knowledge[7].Manual detection of skin lesions through dermoscopy,alternatively,is a laborious process with a higher risk of error,even for skilled dermatologists.Thus,researcher presents distinct computer-aided diagnostic (CAD) methods on the basis of deep learning (DL)and machine learning (ML) characteristics[8].The dermatologist uses CAD system for identifying skin lesions more accurately and quickly.A CAD scheme’s important step is skin image dataset attainment,classification,feature selection,and extraction.The usage of deep features for skin cancer classification and detection showed massive significance over the past decades than the conventional feature extraction technique[9].The deep feature is extracted from the FC layer of CNN method that is applied for the classification.Deep feature,contrasted with conventional techniques,namely shape,texture,and color,includes global and local data regarding an image[10].Fig.1 shows the different aspects of computer vision(CV)in healthcare sector.

Figure 1:Different aspects of CV in healthcare

This study develops a novel computer vision with optimal machine learning enabled skin lesion detection and classification (CVOML-SLDC) model.The goal of the CVOML-SLDC model is to determine the appropriate class labels for the test dermoscopic images.Primarily,the CVOML-SLDC model derives a Gaussian filtering (GF) approach to pre-process the input images and graph cut segmentation is applied.Besides,firefly algorithm(FFA)with EfficientNet based feature extraction module is applied for effectual derivation of feature vectors.Moreover,na?ve bayes (NB) classifier is utilized for the skin lesion detection and classification model.The experimental analysis of the CVOML-SLDC model is performed using benchmark skin lesion dataset.

2 Related Works

In[11],a novel approach to multiclass skin lesion classifier utilizing DL feature fusion and an ELM was presented.The presented technique contains 5 main phases:image acquisition and contrast enhancement;DL feature extracting utilizing transfer learning(TL);optimum feature selection(FS)utilizing hybrid whale optimized and entropymutual information(EMI)technique;fusion of selective features utilizing a modified canonical correlation based technique;and,at last,ELM based classifier.Nasir et al.[12]presented a technique to classifier of benign and melanoma skin lesions.This technique combines pre-processing,lesion segmentation,features extracting,FS,and classifier.The pre-processing was implemented from the context of hair removal by DullRazor,but lesion texture and color data are employed for enhancing the lesion contrast.In lesion segmentation,a hybrid approach was executed and outcomes are fused utilizing additive law of probability.

In[13],a new DL infrastructure was presented for lesion classification and segmentation.The presented method integrates 2 main phases.In order to lesion segmentation,Mask recurrent convolution neural network(Mask R-CNN)based structure was executed.During this method,Resnet50 together with feature pyramid network (FPN) was employed as backbone.Then,fully connected (FC) layer based features were mapped to the last mask generation.Reis et al.[14]presented InSiNet,a DL based CNN for detecting benign and malignant lesions.A comparative analysis is implemented amongst the presented technique and other ML approaches(DenseNet-201,RF,ResNet152V2,GoogleNet,LR,RBF-SVM,and EfficientNetB0).Benyahia et al.[15]examined the efficacy of utilizing 17 usually pretrained CNN infrastructures as feature extracting and 24 ML techniques for evaluating the classifier of skin lesion in 2 distinct data sets such as ISIC 2019 and PH2.

3 The Proposed Model

In this study,a new CVOML-SLDC technique has been developed to determine the appropriate class labels for the test dermoscopic images.Fig.2 offers a brief overall workflow of CVOMLSLDC model.The proposed CVOML-SLDC technique involves different levels of operations such as GF based pre-processing,graph cut segmentation,EfficientNet feature extraction,FFA based hyperparameter tuning,and NB classification.

Figure 2:Workflow of CVOML-SLDC model

3.1 Image Pre-processing:GF Technique

Firstly,GF technique is applied for the removal of noise exist in the dermoscopic images.Initially,the GF method is employed for image pre-processing to eliminate the noise and increase the quality of the images.The 2D GF was widely utilized for noise smoothing and elimination.It needs massive processing resources and the effectiveness in implementing is a motivating study.The convolution operator is defined by the Gaussian operator,and proposal of Gaussian smoothing can be attained by a convolution.The Gaussian operator is in one dimensional is shown in the following:

The optimum smoothing filter for image undergoes localization in the frequency and spatial domain,where the ambiguity relation is satisfied as follows:

The Gaussian operator in two dimensional is given by

In whichσ(sigma)denotes the standard deviation(SD)of Gaussian operator.When it comprises the highest value,the image smoothing would be higher.(x,y)characterize the Cartesian coordinate point of an image.

3.2 Image Segmentation:Graphcut Technique

At the time of image segmentation,the graphcut technique is utilized to determine the affected skin lesion regions.The resolve of graph cuts (GCs) segmentation is for extracting the tumor in the ROI accurately with increased data.The GCs method was generally utilized for medical image segmentation because of its benefits from global optima solution calculation.In GCs,segmentation has been expressed as the subsequent energy function minimized problem[16]:

whereasPrefers the pixel set of imagesf,Nuthe 4-neighborhood of pixelsu,R(fu)the region term punishing individual pixel allocated for object and background,B(fu,fv)the boundary term punishing a discontinuity amongstuandv.During this case,the improved data created by non-linear mapping and gradient data attained in the original region of interest(ROI)are correspondingly executed to the region and boundary terms computation:

whereasIuimplies the intensity of pixelsu,d(u,v)the spatial distance inutov,and η the standard deviation of variances computed by all 2 adjacent pixels from the imagefthat is determined as:

In which,Tuimplies the pixel amount of setP.Ifλis small,the region term roles an important play from the GCs,and segmentation is mostly considered the improvement data that is outcome in many jagged edges and unpleasing particulars.While the enhance ofλ,the weighted boundary term rises,which leads to further precise and smooth segmentation.

3.3 Feature Extraction:Optimal EfficientNet Model

During feature extraction process,the EfficienNet model is applied[17].DL approach has been learned important feature in the input image at a dissimilar convolution level like human brain purpose.The DL was resolving complicated challenges generally with lower error rate and high classifier accuracy.The DL method contains distinct models (activation function,fully connected(FC),convolution,and pooling layers).The DL model has the ability to attain optimum presentation through the ML methods with higher computation difficulty.Unlike other present DL methods,the EfficientNet architecture was a compound scaling method which applies the compound coefficient for scaling network resolution,width,and depth uniformly.An EfficientNet contains 8 distinct models from B0 to B7.The presented method applies inverted bottleneck convolutions that are mainly recognized from the MobileNetV2 method viz.a layer that mostly increases the channel and compresses the network.The architecture reduces computation with the factor of 2 than standard convolution,in whichfdenotes the filter size.It is portrayed that EfficientNetB0 was the simplest of 8 methods and also uses minimal parameters.Hence,it is directly applied EfficientNetB0 for evaluating the efficiency.

To fine tune the hyperparameters of the EfficientNet model,the FFA is utilized.Levy walk(LW)is a random walk that step size differs based on the Lévy likelihood distribution.It is helpful for the simulated environment in which target is dispersed randomly and sparsely Lévy distribution for step size is evaluated in the following.

WhereasUdenotes uniform distribution value within[0,1],andl0andβdenotes variables to be tuned for better fitting a provided landscape.l0andSlrepresents,a scale parameter and the step length.FFA was initially designed by Yang[18].It is stimulated by the flashing pattern of FF that is utilized for attracting potential prey and mating partner.It is effective in handling global optimization,multimodal,nonlinear,and multidimensional issues.InFFA,the two major problems are the distinction of the design of attractiveness and light intensity.FFA employs the ideal rule:

? FF is unisex thus one FF would be attracted to another FFs nevertheless of their sex.

? The attraction is proportionate to the brightness.Furthermore,it is lesser while the distance improves.Consequently,assumed two flashing FFs,lesser brightness moves toward bright one.A FF randomly moves until a bright FF is positioned.

? The landscape of objective function defined the FF brightness

? Since a FF attraction is proportionate to the light intensity observed by the neighboring FFs,

the distinction of attractivenessβwith the distanceris shown below[18]:

? The FF movementi(at locationxi) i.e.,attracted by other FFsj(at locationxj) is defined as follows:

? whereasβ0,γ,rij,α,andξt irepresents,the attraction in distancer,absorbent coefficient,the distance amongxjandxj,a control variable,and a random parameter.The major benefits of the FFA are given in the following:

? Automated partitioning of the population into subclasses thus every subclass could swarm near the local mode.Therefore,FFA could handle multi-modeling optimization;

? The attraction method of the FFA accelerates the convergence.It is non-linear and,therefore,it might be richer interms of dynamic features;

? FFA effectively handles a variegated range of optimization problems while it includes SA,PSO,and DE with certain cases.

3.4 Image Classification:NB Classifier

At the final stage,the NB classifier is employed for the proper identification of skin lesion classification process[19].It is an extremely practical Bayesian learning approach.This classification generates utilization of Bayes principle that considers independence amongst predictors.In other words,NB classifier postulate which the presence of attributes from the class is not connected to occurrence of some other attribute.The Bayes principle computes conditional probability.The mathematically stated,this is revealed in Eq.(11).The variables in Eqs.(11)-(13)are determined as:

?P(Y|X)refers the posterior probability of classYprovided forecaster(X).

?P(Y)signifies the prior probability of class.

?P(X|Y)implies the probability of forecaster that is then recognized as a possibility.

?P(X)represents the prior probability of forecaster By utilizing this approach,every feature is supposed independent based on Bayes theorem that represents there is no dependency amongst the element value on provided class and another attribute[12].The Bayes theorem allows us for expressing the posterior probability with respect to the prior probability(Y),class-conditional probabilityP(X|Y),and evidence,P(X)as illustrated in Eq.(11).The NB classifier work by evaluating the class-conditional probability.Thereby,it considers that attribute is conditional independence,provided the class labely.The mathematical process of conditional independence assumption was provided as:

In Eq.(12),all the attributes setX:{X,X2....Xd} has ofdelement features.For classifying a test data set,NB classifier works by computing the posterior probability of all the classesYutilizing Eq.(13).

In Eq.(13),P(X)refers the static to allY,so the class which maximize the expressionis selected.NB classifier utilizes the conditional independence assumption for calculating the conditional probability of allXiprovidedY,before calculating the class conditional probability ofXi.

4 Performance Validation

The experimental validation of the CVOML-SLDC model is validated using benchmark skin lesion dataset that comprises images under 6 classes[20].Totally,730 images exist under Actinic Keratosis (ACK) class,845 images under Basal Cell Carcinoma of skin (BCC),52 images under Malignant Melanoma(MEL),244 images under Melanocytic Nevus of Skin(NEV),192 images under Squamous Cell Carcinoma(SCC),and 235 images under Seborrheic Keratosis(SEK).Fig.3 illustrates some sample test images.

Fig.4 illustrates a confusion matrix generated by the CVOML-SLDC model on the whole skin lesion dataset.The figure indicated that the CVOML-SLDC model has identified 666 images into ACK,814 images into BCC,16 images under MEL,183 images under NEV,142 images under SCC,and 138 images under SEK classes.

Figure 3:Sample images

Figure 4:Confusion matrix of CVOML-SLDC model on entire dataset

Fig.5 demonstrates an overall precision-recall examination of the CVOML-SLDC model on the entire test dataset.The figure reported that the CVOML-SLDC model has accomplished effectual performance on the classification of distinct class labels.

Fig.6 portrays a clear ROC investigation of the CVOML-SLDC model on the entire test dataset.The figure portrayed that the CVOML-SLDC model has resulted in proficient results with maximum ROC values under distinct class labels.

Figure 5:Precision-Recall of CVOML-SLDC model on entire dataset

Figure 6:ROC of CVOML-SLDC model on entire dataset

Fig.7 demonstrates a confusion matrix produced by the CVOML-SLDC model on 70% of training skin lesion dataset.The figure specified that the CVOML-SLDC model has recognized 468 images into ACK,589 images into BCC,11 images under MEL,125 images under NEV,90 images under SCC,and 93 images under SEK classes.

Figure 7:Confusion matrix of CVOML-SLDC model on 70%of training data

Fig.8 validates a complete precision-recall examination of the CVOML-SLDC model on 70%of training dataset.The figure stated that the CVOML-SLDC model has gained proficient outcomes on the classification of distinct class labels.

Figure 8:Precision-Recall of CVOML-SLDC model on 70%of training dataset

Fig.9 reveals a clear ROC examination of the CVOML-SLDC model on 70%of training dataset.The figure exposed that the CVOML-SLDC model has resulted in proficient results with supreme ROC values under different class labels.

Figure 9:ROC of CVOML-SLDC model on 70%of training dataset

Fig.10 exemplifies a confusion matrix created by the CVOML-SLDC model on the 30%testing skin lesion dataset.The figure specified that the CVOML-SLDC model has acknowledged 198 images into ACK,225 images into BCC,5 images under MEL,58 images under NEV,52 images under SCC,and 45 images under SEK classes.

Figure 10:Confusion matrix of CVOML-SLDC model on 30%of testing dataset

Fig.11 establishes an overall precision-recall examination of the CVOML-SLDC model on 30%of testing dataset.The figure reported that the CVOML-SLDC model has accomplished effectual performance on the classification of distinct class labels.

Figure 11:Precision-Recall of CVOML-SLDC model on 30%of testing dataset

Fig.12 describes a clear ROC investigation of the CVOML-SLDC model on 30% of testing dataset.The figure represented that the CVOML-SLDC model has resulted in capable results with maximum ROC values under distinct class labels.

Figure 12:ROC of CVOML-SLDC model on 30%of testing dataset

Tab.1 and Fig.13 reported the overall skin lesion classification results of the CVOML-SLDC model under distinct measures and aspects.The experimental results stated that the CVOML-SLDC model has gained effectual outcomes on all datasets.For instance,with entire dataset,the CVOMLSLDC model has resulted in an overallaccuy,precn,sensy,specy,AUC of 95.08%,85.20%,71%,96.53%,and 83.76%respectively.Along with that,with 70%of training dataset,the CVOML-SLDC model has provided an overallaccuy,precn,sensy,specy,AUC of 95.19%,85.09%,70.72%,96.55%,and 83.63%respectively.Moreover,with 30%of testing dataset,the CVOML-SLDC model has reached to overallaccuy,precn,sensy,specy,AUC of 94.83%,85.95%,71.62%,96.46%,and 84.04%respectively.

Table 1:Overall skin cancer classification outcomes of CVOML-SLDC model on distinct classes

Finally,a detailed comparative study of the CVOML-SLDC model with recent models is made in Tab.2[21,22].The experimental results indicated that the k-nearest neighbour(KNN)-Fusion and neural network (NN)-Fusion models have reached worse performance over the other methods.At the same time,the KNN-CNN and multi-class support vector machine (MSVM)-Fusion models have reached slightly enhanced outcomes.Followed by,the NN-CNN and MSVM-CNN models have accomplished moderately improved outcomes.However,the CVOML-SLDC model has reached maximum performance withsensyof 71.62%,specyof 96.46%,precnof 85.95%,andaccuyof 94.83%.

Figure 13:Comparison study of CVOML-SLDC model on benchmark dataset

Table 2:Comparative results of CVOML-SLDC model with existing models

After observing the above mentioned tables and figures,it is demonstrated that the CVOMLSLDC model has resulted in maximum performance on the test datasets.

5 Conclusion

In this study,a new CVOML-SLDC technique has been developed to determine the appropriate class labels for the test dermoscopic images.The proposed CVOML-SLDC technique involves different levels of operations such as GF based pre-processing,graph cut segmentation,EfficientNet feature extraction,FFA based hyperparameter tuning,and NB classification.The application of FFA helps to effectually adjust the hyperparameter values of the EfficientNet model.The experimental analysis of the CVOML-SLDC model is performed using benchmark skin lesion dataset.The detailed comparative study of the CVOML-SLDC model reported the improved outcomes over the recent approaches interms of different evaluation metrics.Therefore,the CVOML-SLDC technique can be utilized as an effectual tool for skin lesion classification.In future,deep instance segmentation techniques can be derived to improve the detection outcomes of the CVOML-SLDC technique.

Funding Statement:The authors received no specific funding for this study.

Conflicts of Interest:The authors declare that they have no conflicts of interest to report regarding the present study.

主站蜘蛛池模板: 美女一区二区在线观看| 免费大黄网站在线观看| 日韩毛片基地| 亚洲欧美在线精品一区二区| 国产一区在线观看无码| 国产精品成人免费综合| 亚卅精品无码久久毛片乌克兰| 国产精品性| 啊嗯不日本网站| 国产一区二区影院| 国内精品久久人妻无码大片高| 四虎永久在线精品影院| 欧美在线国产| 99这里只有精品免费视频| 精品一区二区三区视频免费观看| 欧美国产精品不卡在线观看| 欧美亚洲香蕉| 日韩精品一区二区三区免费在线观看| 最新国产精品第1页| 亚洲天堂伊人| 亚洲成人一区二区三区| 亚洲天堂首页| 无码免费视频| 人妖无码第一页| 青青久久91| 国产三级精品三级在线观看| 999国产精品永久免费视频精品久久| 久久久成年黄色视频| 欧美爱爱网| 欧美福利在线观看| 在线看片中文字幕| 久草国产在线观看| 色香蕉影院| 欧美h在线观看| 波多野结衣无码AV在线| 人妻丰满熟妇AV无码区| 亚洲精品无码抽插日韩| 中文字幕丝袜一区二区| 国产农村1级毛片| 91亚瑟视频| 99国产精品国产高清一区二区| 亚洲国产欧美中日韩成人综合视频| 四虎影院国产| 免费AV在线播放观看18禁强制| 欧美不卡二区| 538国产在线| 亚洲色图在线观看| 成人午夜在线播放| 美女被操91视频| 欧美成人午夜在线全部免费| 国产色网站| 国产网站免费| 婷婷在线网站| 亚洲网综合| 久久久久久高潮白浆| 日本福利视频网站| 色成人综合| 亚洲乱伦视频| 色综合激情网| 国产成人一区免费观看| 大学生久久香蕉国产线观看 | 欧美日韩国产在线人| 成人小视频在线观看免费| 国产偷倩视频| 国产成人AV综合久久| 欧美 亚洲 日韩 国产| 亚洲欧美成aⅴ人在线观看| 在线国产毛片| 国产精品性| AV不卡在线永久免费观看| 亚洲有码在线播放| 日韩黄色在线| 国产精品粉嫩| 国产jizzjizz视频| 97se亚洲综合在线| 亚洲精选高清无码| 精品一区二区三区水蜜桃| 波多野结衣中文字幕一区二区| 中文字幕伦视频| 国模沟沟一区二区三区| 亚洲天堂视频网站| 最新亚洲av女人的天堂|