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Impact of Portable Reingun Sprinkler for Improving Irrigation Efficiency at Farmers Field

Thesis Info

Author

Muhammad Shabbir Ahmad

Department

Centre of Excellence in Water Resources Engg. UET.

Institute

University of Engineering and Technology

Institute Type

Public

Campus Location

UET Main Campus

City

Lahore

Province

Punjab

Country

Pakistan

Thesis Completing Year

1994

Thesis Completion Status

Completed

Page

127 . HB.

Subject

Agriculture & Related Technologies

Language

English

Other

Call No: 631.587 A 5 I

Added

2021-02-17 19:49:13

Modified

2023-01-07 09:52:40

ARI ID

1676712366297

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دکھاں دی سر چائی پنڈ

دکھاں دی سِر چائی پنڈ
درداں سانوں دتا پھنڈ
جہیڑا یار ملاوے گا
اس دے منہ وچ گھیو تے کھنڈ
جدوں وچھنا یار میرا
ٹٹے مان گمان گھمنڈ
جہیڑے سجن سچے ہِن
اوہ نہیں لگن دیندے کنڈ
وقت وہاندا جاندا اے
کر لے یار ویلے دی ونڈ
انڈیا(۱) جدوں ہلایا آ
اوہدے منہ تے ٹُھکی چنڈ
(۱) ۲۷ فروری ۲۰۱۹ کو انڈیا کے دو جہاز پاکستان کی حدود میں آئے۔ دونوں کو مار گرایا گیا۔

بالوں کو سنوارنے سے متعلق شرعی احکامات

Allāh Almighty has concentrated most of the physical beauty of the human beings in the upper part of the human body, i. E., the face and what surrounds the face. Here is displayed the important features of human beauty. Hair on head adds beauty to a person’s countenance. Especially, long, thick, silky & shiny hair is always preferred by females. But it required to be kept clean, tidy and properly combed. Unfortunately, often, it seems that the women, who wear “Ḥijāb”, do not bother to maintain their hair in a proper manner. Since, it is out of sight, so is out of mind, but, it does not mean that since if hair is not visible, they should neglect it. Sometimes, improper keeping of hair creates a lot of problems like lice, itching, dandruff, hair fall, etc. Therefore, cleanliness is the most important element for the health of hair and Islām also recommends the same. Most of the time, people adopt different methods and products for hairstyling, such as branded shampoo, extensions, transplantation of hair, dyeing, trimming of hair, etc. But, people need to know the Islamic ruling of beatification, so that they may not indulge in something, which is not allowed in the Islamic law. Therefore, the author of this paper, chose this topic to explore and hence, guide the people, especially, the women, the methods and types of products that are allowed for them to use and adopt, and the others ones that are forbidden or undesirable, according to Islamic law of beautification.

Application of Fuzzy Ontology in Image Retrieval

Rapid increase in the use of digital images either for security, health treatment, or entertainment demands an effective image retrieval system. In text based image retrieval, images are annotated with keywords based on human perception. A user query is composed of keywords according to his/her requirements. Query keywords are matched with the keywords associated with images, for retrieval. This process has been extended with ontology to resolve semantic heterogeneities in keywords matching. However, crisp annotation and retrieval processes could not produce the desired results because both processes involve human perception. To reduce the matching complexities produced due to human perception, an image retrieval model has been proposed in this thesis that makes use of fuzzy ontology for improving retrieval performance. For representing the image content, it is divided into regions in our dataset and then regions are classified into concepts. The concepts are combined into categories. The concepts, categories and images are linked among themselves with fuzzy values in ontology. The model has been evaluated through both objective and subjective measures. Experimental results show that the proposed system performs better than the existing systems in terms of retrieval performance. Besides this, users usually desire higher proportion of the query keywords in the retrieved images than other undesired keywords. Existing systems return images that mostly do not contain the query keywords either in equal or higher proportion than other keywords. The research in this thesis resolves this issue by applying uncertain frequent pattern mining on the association that exists among the concepts in images. These patterns assist in retrieving images that contain the required query keywords in high proportion. The ranking of retrieved images has been objectively evaluated using two different measures. Experimental results show that the proposed image retrieval system performs better than existing image retrieval systems. The results of image retrieval systems are typically assessed for quality either by objective or subjective evaluation measures. These measures usually produce good results in typical image collections with predefined categories. However, the results of objective evaluation measures deteriorate in collections where an individual image may belong to multiple categories. Furthermore, conducting subjective evaluation is very difficult if not impossible on a large number of queries for every collection due to humans’ involvement, as it is a tedious and time consuming task. Therefore, an automated assessment model for subjective evaluation in image retrieval systems is required. The main hurdle in creating such an automated system is the availability of subjective evaluation benchmark for the retrieved images. This thesis also presents a new benchmark and a novel evaluation model for conducting automated subjective evaluation by tackling it as a supervised machine learning problem with support vector regression (SVR). The experimental results demonstrate that the proposed system automatically predicts the mean opinion score (MOS) with reduced error and correlates well with human subjects’ assessment.