scholarly journals Sistem Presensi Karyawan Berbasis Pengenalan Wajah Dengan Metode Support Vector Machine

2021 ◽  
Vol 5 (2) ◽  
pp. 55-62
Author(s):  
David Setiyadi ◽  
Fauzun Atabiq ◽  
Siti Aisyah

Sistem presensi saat ini yang ada pada instansi ataupun perusahaan masih banyak yang menggunakan sistem  manual. Disisi lain, perusahaan-perusahaan tersebut juga telah memiliki aplikasi pengelolaan SDM online. Oleh karena itu, untuk efektifitas dan pengembangan sistem, perlu dilakukan pengembangan sistem presensi manual tersebut menjadi sebuah sistem yang dapat diintegrasikan dengan sistem pengelolaan SDM. Untuk itu, penelitian ini mengusulkan pengembangan sistem presensi berbasiskan pengenalan wajah yang diintegrasikan dengan aplikasi pengelolaan SDM. Sistem yang dibangun merupakan sistem deteksi dan pengenalan menggunakan Support Vector Machine yang di kombinasikan dengan metode Histogram of oriented gradient. Hasil pengujian sistem presensi menunjukkan hasil recall sebesar 77,78%, nilai spesifitas 32,22%, akurasi sistem 72,78%, dan kepresisian sistem mencapai 70,71%.

2017 ◽  
Vol 873 ◽  
pp. 347-352
Author(s):  
Yong Hao Xiao ◽  
Hong Zhen

Human detection is a keyproblem in computer vision. Recently, some research has been focusing on the detection ofpedestrianusing infrared images. The infrared images have outstanding merit. It depends only on object's temperature, but not on color or texture. In this paper, the pedestrian crowd detection approach is proposed. The approach is compose of ROI blocks extraction and crowd block recognition. ROI blocks can be extracted with circle gradient operator and weighted geometric filtering. Crowd blocks are recognized by support vector machine, which combines histogram of oriented gradient and circle gradient. The experimental results show thatthe approach works effectively in different scenes.


Author(s):  
CHIH-LUNG LIN ◽  
HSU-YUNG CHENG ◽  
KUO-CHIN FAN ◽  
CHUN-WEI LU ◽  
CHANG-JUNG JUAN ◽  
...  

This paper presents a reliable and robust palmprint verification approach that involves using a bi-feature, biometric, palmprint feature-point number (FPN) and a histogram of oriented gradient (HOG). The bi-feature was fused and verified using a support vector machine (SVM) at the feature level. The approach has the advantages of capturing palm images in pegless scenarios with a low cost and low-resolution (100 dpi) digital scanner, and one sensor can capture palmprint bi-feature information. The low-resolution images result in a smaller database. Nine thousand palmprint images were collected from 300 people to verify the validity of the proposed approach. The results showed an accurate classification rate of 99.04%. The experimental results demonstrated that the proposed approach is feasible and effective in palmprint verification. Our findings will help extend palmprint verification technology to security access control systems.


2020 ◽  
Vol 2020 ◽  
pp. 1-12
Author(s):  
Zhe Xu ◽  
Xi Guo ◽  
Anfan Zhu ◽  
Xiaolin He ◽  
Xiaomin Zhao ◽  
...  

Symptoms of nutrient deficiencies in rice plants often appear on the leaves. The leaf color and shape, therefore, can be used to diagnose nutrient deficiencies in rice. Image classification is an efficient and fast approach for this diagnosis task. Deep convolutional neural networks (DCNNs) have been proven to be effective in image classification, but their use to identify nutrient deficiencies in rice has received little attention. In the present study, we explore the accuracy of different DCNNs for diagnosis of nutrient deficiencies in rice. A total of 1818 photographs of plant leaves were obtained via hydroponic experiments to cover full nutrition and 10 classes of nutrient deficiencies. The photographs were divided into training, validation, and test sets in a 3 : 1 : 1 ratio. Fine-tuning was performed to evaluate four state-of-the-art DCNNs: Inception-v3, ResNet with 50 layers, NasNet-Large, and DenseNet with 121 layers. All the DCNNs obtained validation and test accuracies of over 90%, with DenseNet121 performing best (validation accuracy = 98.62 ± 0.57%; test accuracy = 97.44 ± 0.57%). The performance of the DCNNs was validated by comparison to color feature with support vector machine and histogram of oriented gradient with support vector machine. This study demonstrates that DCNNs provide an effective approach to diagnose nutrient deficiencies in rice.


2018 ◽  
Vol 7 (3.3) ◽  
pp. 151
Author(s):  
N Venkateswara Rao ◽  
G Anil Kumar ◽  
B Harish

The intension of the project is to classify objects in real world and to tracks them throughout their life spans. Object detection algorithms use feature extraction and learning algorithms to classification of an object category. Our algorithm uses a combination of “histogram of oriented gradient” (HOG) and “support vector machine” (SVM) classifier to classify of objects. Results have shown this to be a robust method in both classifying the objects along with tracking them in real time world.  


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