Monday, 21 August 2017

Hai semuanya, pada kesempatan kali ini saya akan menjelaskan beberapa poin yang terdapat pada abstrak sebuah dokumen atau laporan dan juga menunjukan contohnya yg saya ambil dari link: http://ieeexplore.ieee.org/document/7353157/. Berikut merupakan poin poin yg terdapat pada abstraksi sebuah laporan atau dokumen.

  • .       Latar Belakang

Latar belakang merupakan penjelasan tentang sesuatu permasalahan yang akan kita angkat menjadi sebuah rumusan masalah dan menyelesaikannya. Contohnya seperti kalimat yg digaris bawahi berikut ini:
Edge-based active contour models are effective in segmenting images with intensity inhomogeneity but often fail when applied to images containing poorly defined boundaries, such as in medical images. Traditional edge-stop functions (ESFs) utilize only gradient information, which fails to stop contour evolution at such boundaries because of the small gradient magnitudes.To address this problem, we propose a framework to construct a group of ESFs for edge-based active contour models to segment objects with poorly defined boundaries. In our framework, which incorporates gradient information as well as probability scores from a standard classifier, the ESF can be constructed from any classification algorithm and applied to any edge-based model using a level set method. Experiments on medical images using the distance regularized level set for edge-based active contour models as well as the k-nearest neighbours and the support vector machine confirm the effectiveness of the proposed approach.

  • .    Tujuan Penelitian

Tujuan Penelitian merupakan solusi penyelesaian atau hasil akhir yang akan kita dapatkan. Contohnya seperti kalimat yg digaris bawahi berikut ini:
Edge-based active contour models are effective in segmenting images with intensity inhomogeneity but often fail when applied to images containing poorly defined boundaries, such as in medical images. Traditional edge-stop functions (ESFs) utilize only gradient information, which fails to stop contour evolution at such boundaries because of the small gradient magnitudes.To address this problem, we propose a framework to construct a group of ESFs for edge-based active contour models to segment objects with poorly defined boundaries. In our framework, which incorporates gradient information as well as probability scores from a standard classifier, the ESF can be constructed from any classification algorithm and applied to any edge-based model using a level set method (method). Experiments on medical images using the distance regularized level set for edge-based active contour models as well as the k-nearest neighbours and the support vector machine confirm the effectiveness of the proposed approach.

  • .       Metode yang digunakan

Merupakan tahapan atau proses  yang akan digunakan untuk menyelesaikan permasalahan. Contohnya seperti kalimat yg digaris bawahi berikut ini:
Edge-based active contour models are effective in segmenting images with intensity inhomogeneity but often fail when applied to images containing poorly defined boundaries, such as in medical images. Traditional edge-stop functions (ESFs) utilize only gradient information, which fails to stop contour evolution at such boundaries because of the small gradient magnitudes.To address this problem, we propose a framework to construct a group of ESFs for edge-based active contour models to segment objects with poorly defined boundaries. In our framework, which incorporates gradient information as well as probability scores from a standard classifier, the ESF can be constructed from any classification algorithm and applied to any edge-based model using a level set method. Experiments on medical images using the distance regularized level set for edge-based active contour models as well as the k-nearest neighbours and the support vector machine confirm the effectiveness of the proposed approach.

  • .    Kesimpulan/Hasil

Merupakan Hasil yg kita dapatkan dari peyelesaian masalah tersebut.
Contohnya seperti kalimat yg digaris bawahi berikut ini:
Edge-based active contour models are effective in segmenting images with intensity inhomogeneity but often fail when applied to images containing poorly defined boundaries, such as in medical images. Traditional edge-stop functions (ESFs) utilize only gradient information, which fails to stop contour evolution at such boundaries because of the small gradient magnitudes.To address this problem, we propose a framework to construct a group of ESFs for edge-based active contour models to segment objects with poorly defined boundaries. In our framework, which incorporates gradient information as well as probability scores from a standard classifier, the ESF can be constructed from any classification algorithm and applied to any edge-based model using a level set method. Experiments on medical images using the distance regularized level set for edge-based active contour models as well as the k-nearest neighbours and the support vector machine confirm the effectiveness of the proposed approach.



Berikut merupakan penjelasan mengenai poin poin apa saja yang harus ada pada abstrak.





0 comments:

visitor

Flag Counter

Popular Posts