complex images
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Machines ◽  
2022 ◽  
Vol 10 (1) ◽  
pp. 30
Author(s):  
Liang Gong ◽  
Shengzhe Fan

The number of grains within a panicle is an important index for rice breeding. Counting manually is laborious and time-consuming and hardly meets the requirement of rapid breeding. It is necessary to develop an image-based method for automatic counting. However, general image processing methods cannot effectively extract the features of grains within a panicle, resulting in a large deviation. The convolutional neural network (CNN) is a powerful tool to analyze complex images and has been applied to many image-related problems in recent years. In order to count the number of grains in images both efficiently and accurately, this paper applied a CNN-based method to detecting grains. Then, the grains can be easily counted by locating the connected domains. The final error is within 5%, which confirms the feasibility of CNN-based method for counting grains within a panicle.


2021 ◽  
Author(s):  
Peter Andrew McAtee ◽  
Simona Nardozza ◽  
Annette Richardson ◽  
Mark Wohlers ◽  
Robert Schaffer

Abstract BackgroundThe ability to quantify the colour of fruit is extremely important for a number of applied fields including plant breeding, postharvest assessment, and consumer quality assessment. Fruit and other plant organs display highly complex colour patterning. This complexity makes it challenging to compare and contrast colours in an accurate and time efficient manner. Multiple methodologies exist that attempt to digitally quantify colour in complex images but these either require a priori knowledge to assign colours to a particular bin, or average the colours present within an assayed region into a single colour value. As such, to date there are no published methodologies that assess colour patterning using a data driven approach. Results In this study we present a methodology to acquire and process digital images of biological samples that contain complex colour gradients. The CIE (Commission internationale de l'éclairage / International Commission on Illumination) ΔE2000 formula was used to determine the perceptually unique colours (PUC) within images of fruit containing complex colour gradients. This process, on average, resulted in a 98% reduction in colour values from the number of unique colours (UC) in the original image. This data driven procedure summarised the colour data values while maintaining a linear relationship with the normalised colour complexity contained in the total image. A weighted ΔE2000 distance metric was used to generate a distance matrix and facilitated clustering of summarised colour data.ConclusionsClustering showed that our data driven methodology has the ability to group these complex images into their respective binomial families while maintaining the ability to detect subtle colour differences. This methodology was also able to differentiate closely related images. We provide a high quality set of complex biological images that span the visual spectrum that can be used in future colorimetric research to benchmark method development.


2021 ◽  
pp. 443-448
Author(s):  
R. N. Uma Mahesh ◽  
B. Lokesh Reddy ◽  
Anith Nelleri

Author(s):  
Juwairiyah Naeem ◽  
Kashif Javed ◽  
Saddaf Rubab ◽  
M. Jawad Khan
Keyword(s):  

2021 ◽  
Vol 32 (4) ◽  
Author(s):  
Mighty Abra Ayidzoe ◽  
Yongbin Yu ◽  
Patrick Kwabena Mensah ◽  
Jingye Cai ◽  
Kwabena Adu ◽  
...  
Keyword(s):  

2021 ◽  
Vol 23 (06) ◽  
pp. 47-57
Author(s):  
Aditya Kulkarni ◽  
◽  
Manali Munot ◽  
Sai Salunkhe ◽  
Shubham Mhaske ◽  
...  

With the development in technologies right from serial to parallel computing, GPU, AI, and deep learning models a series of tools to process complex images have been developed. The main focus of this research is to compare various algorithms(pre-trained models) and their contributions to process complex images in terms of performance, accuracy, time, and their limitations. The pre-trained models we are using are CNN, R-CNN, R-FCN, and YOLO. These models are python language-based and use libraries like TensorFlow, OpenCV, and free image databases (Microsoft COCO and PAS-CAL VOC 2007/2012). These not only aim at object detection but also on building bounding boxes around appropriate locations. Thus, by this review, we get a better vision of these models and their performance and a good idea of which models are ideal for various situations.


2021 ◽  
Vol 112 ◽  
pp. 107534
Author(s):  
Abdallah Benzine ◽  
Bertrand Luvison ◽  
Quoc Cuong Pham ◽  
Catherine Achard

Author(s):  
Polina S. Artemieva ◽  

The article discusses superstitions as a cultural phenomenon, the author describes the features of their functioning in a multicultural literary text and discusses the possibility of classifying them as national precedent phenomena. Particular attention is paid to images, precedent situations, traditions and artifacts.


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