This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Kamp-Becker, I. Autism Spectrum Disorder in ICD-11 – A Critical Reflection of its Possible Impact on Clinical Practice and Research. – Molecular Psychiatry, Vol. 29, 2024, pp. 633-6387.Search in Google Scholar
Sulkes, B., S. Definition of Developmental Disorders. https://www.msdmanuals.com/home/children-s-health-issues/learning-and-developmental-disorders/definition-of-developmental-disordersSearch in Google Scholar
Daulay, N. Parenting Stress of Mothers in Children with Autism Spectrum Disorder: A Review of the Culture in Indonesia. – In: Proc. of International Conference on Southeast Asia Studies, 2018.Search in Google Scholar
Henry, M., E. Living Life Like It’s Golden with Disability: Case Studies of Independent Living. 2018.Search in Google Scholar
Mohd Kamil, N. K., A. S. Amin, N. Md Akhir, A. R. Ahmad Badayai, I. Mohd Zambri, R. Sutan, K. F. Khairuddin, W. A. Wan Abdullah. Independent Living Skills Needed by Students with Special Educational Needs (SEN) Towards Inclusive Education: A Systematic Literature Review. – Specialists Ugdym, Vol. 1, 2023, No 44, pp. 610-623.Search in Google Scholar
Volkmar, F. R. Encyclopaedia of Autism Spectrum Disorders. Springer, Switzerland, 2021.Search in Google Scholar
Pramardika, D., D. Susanti, E. Fitriana. Analisis Pola Makan Anak Autis Yayasan Tongkat Musa Indonesia ABK Bangun Rejo Kabupaten Kutai Kartanegara Tahun 2019. – Bunda Edu-Midwifery Journal, Vol. 2, 2019, No 1, pp. 18-24.Search in Google Scholar
Kurniati, L. Modul Guru Pembelajar SLB Autis. PPPPTK TK DAN PLB, Bandung, 2016.Search in Google Scholar
Beddiar, D. R., B. Nini, M. Sabokrou, A. Hadid. Vision-Based Human Activity Recognition: A Survey. – Multimed Tools Appl Journal, Vol. 79, 2020, pp. 30509-30555.Search in Google Scholar
Su, X., H. Tong, P. Ji. Activity Recognition with Smartphone Sensors. – Tsinghua Science and Technology, Vol. 19, 2014, No 3, pp. 235-249.Search in Google Scholar
Jain, A., V. Kanhangad. Human Activity Classification in Smartphones Using Accelerometer and Gyroscope Sensors. – IEEE Sensors Journal, Vol. 18, 2018, No 3, pp. 1169-1177.Search in Google Scholar
Yao, G., T. Lei, J. Zhong. A Review of Convolutional-Neural-Network-Based Action Recognition. – Pattern Recognition Letters, Vol. 118, 2019, pp. 14-22.Search in Google Scholar
Dhillon, A., G. K. Verma. Convolutional Neural Network: A Review of Models, Methodologies and Applications to Object Detection. – Progress in Artificial Intelligence, Vol. 9, 2020, No 2, pp. 85-112.Search in Google Scholar
Alzubaidi, L., J. Zhang, A. J. Humaidi, A. Al-Dujaili, Y. Duan, O. Al-Shamma, J. Santamaria, M. A. Fadhel, M. Al‐Amidie, L. Farhan. Review of Deep Learning: Concepts, CNN Architectures, Challenges, Applications, Future Directions. – Journal of Big Data, Vol. 8, 2021, pp. 1-74.Search in Google Scholar
Bhatt, D., C. Patel, H. Talsania, J. Patel, R. Vaghela, S. Pandya, K. Modi, H. Ghayvat. CNN Variants for Computer Vision: History, Architecture, Application, Challenges and Future Scope. – Electronics, Vol. 10, 2021, No 2470, pp. 1-28.Search in Google Scholar
Haweel, R., A. Shalaby, A. Mahmoud, N. Seada, S. Ghoneims, M. Ghazal, M. F. Casanova, G. N. Barnes, A. El-Baz. A Robust DWT – CNN-Based CAD System for Early Diagnosis of Autism Using Task-Based fMRI. – Medical Physics, Vol. 48, 2020, No 5, pp. 2315-2326.Search in Google Scholar
Sherkatghanad, Z., M. Akhondzadeh, S. Salari, M. Zomorodi-Moghadam, M. Abdar, U. R. Acharya, R. Khosrowabadi, V. Salari. Automated Detection of Autism Spectrum Disorder Using a Convolutional Neural Network. – Front Neurosci, Vol. 13, 2020, pp. 1-17.Search in Google Scholar
Mitschke, N., Y. Ji, M. Heizmann. Task Specific Image Enhancement for Improving the Accuracy of CNNs. – In: Proc. of 10th International Conference on Pattern Recognition Applications and Methods, 2021, pp. 174-181.Search in Google Scholar
Ferdinand, V., A. Henry, G. E. Nawir, V. Anderies., A. Gunawan. Effect of Image Enhancement in CNN-Based Medical Image Classification: A Systematic Literature Review. – In: Proc. of 5th International Conference on Information and Communications Technology, 2022, pp. 87-92.Search in Google Scholar
Gonzalez, R. C., R. E. Woods. Digital Image Processing. New York, Pearson, 2018.Search in Google Scholar
Werdiningsih, I., I. Puspitasari, R. Hendradi. Analysis and Techniques of Enhancing the Video Quality of Children with Autism Spectrum Disorder’s Daily Activities – In: Proc. of 24th International Seminar on Intelligent Technology and Its Applications (ISITIA’24), 2024, pp. 621-626.Search in Google Scholar
Mustaghfirin, F., H. Erwin, K. Putra, U. Yanti, R. Ricadonna. The Comparison of Iris Detection Using Histogram Equalization and Adaptive Histogram Equalization Methods. – In: Proc. of International Conference on Information System Computer Science and Engineering, 2019.Search in Google Scholar
Qi, Y., Z. Yang, W. Sun, M. Lou, J. Lian, W. Zhao, X. Deng, Y. Ma. A Comprehensive Overview of Image Enhancement Techniques. – Archives of Computational Methods in Engineering, Vol. 29, 2022, pp. 583-607.Search in Google Scholar
Lu, P., B. Song, L. Xu. Human Face Recognition Based on Convolutional Neural Network and Augmented Dataset. – Systems Science & Control Engineering, Vol. 9, 2021, No 2, pp. 29-37.Search in Google Scholar
Rao Killi, C. B., N. Balakrishnan, C. S. Rao. Deep Fake Image Classification Using VGG-19 Model. – International Information and Engineering Technology Association, Vol. 28, 2023, No 2, pp. 509-515.Search in Google Scholar
Rusia, M. K., D. K. Singh. A Color-Texture-Based Deep Neural Network Technique to Detect Face Spoofing Attacks. – Cybernetics and Information Technologies, Vol. 22, 2022, No 3, pp. 127-145.Search in Google Scholar
Habiban, M., F. R. Hamade, N. A. Mohsin. Hybrid Edge Detection Methods in Image Steganography for High Embedding Capacity. – Cybernetics and Information Technologies, Vol. 24, 2024, No 1, pp. 157-170.Search in Google Scholar
Sara, U., M. Akter, M. S. Uddin. Image Quality Assessment through FSIM, SSIM, MSE and PSNR – A Comparative Study. – Journal of Computer and Communications, Vol. 7, 2019, No 3, pp. 8-18.Search in Google Scholar
Erwin, D. R. Ningsih, Improving Retinal Image Quality Using the Contrast Stretching, Histogram Equalization, and CLAHE Methods with Median Filter. – International Journal of Image, Graphics and Signal Processing, Vol. 12, 2020, No 2, pp. 30-41.Search in Google Scholar
Huan, B., K. Zhang, R. Sanchez-Romero, J. Ramsey, M. Glymoury, C. Glymoury. Diagnosis of Autism Spectrum Disorder by Causal Influence Strength Learned from Resting-State fMRI Data. – Imaging and Signal Analysis Journal, Vol. 1, 2019, pp. 237-267.Search in Google Scholar