Disadvantages are present in every tool for editing every document type, and despite the fact that you can find a wide variety of solutions out there, not all of them will fit your particular requirements. DocHub makes it easier than ever to make and alter, and handle paperwork - and not just in PDF format.
Every time you need to easily rub out pattern in binary, DocHub has got you covered. You can easily alter document elements including text and pictures, and layout. Personalize, arrange, and encrypt documents, build eSignature workflows, make fillable forms for intuitive data gathering, and more. Our templates feature allows you to create templates based on paperwork with which you often work.
In addition, you can stay connected to your go-to productivity features and CRM solutions while dealing with your documents.
One of the most extraordinary things about using DocHub is the option to manage document tasks of any complexity, regardless of whether you need a swift modify or more complex editing. It includes an all-in-one document editor, website document builder, and workflow-centered features. In addition, you can rest assured that your paperwork will be legally binding and adhere to all safety frameworks.
Shave some time off your projects with DocHub's capabilities that make handling documents straightforward.
hello friends welcome to our channel knowledge amplifier so in my this particular video i am going to discuss one very important and frequently used feature extraction technique from images okay for implementing uh image classification or something of that kind in machine learning projects okay so that is local binary pattern very important feature expression technique right so whenever you train any deep learning model that time you no need to extract features and train your model deep learning model internally will do that for you but when youamp;#39;re using machine learning model that time you need to give the features not directly image right so how this local binary pattern feature extraction works let me discuss consider this three cross three window present in my image okay grayscale image okay so now consider the central pixel with respect to this central pixel we will basically apply thresholding for all other neighboring pixel okay so see central pixel intensity is what eig