Abstract

This paper proposed an accurate, fast and reliable strawberry, cherry fruit detection and classification system for the automated strawberry cherry yield estimation. State-of-the-art deep learning-based fine-tuned MobileNet Convolutional Neural Network is developed to detect and classify strawberry and cherry fruit types in the outdoor field. The proposed CNN model is trained on 4250 strawberry fruit images, 3878 Cherry fruit images and tested on 990 strawberry fruit’s images, 1012 Cherry fruit images. To capture features and classify fruit type, a fine-tuned MobileNet Convolutional Neural Network model is presented in this study. The original MobileNet CNN model has 88 layers, which is computationally intensive and has more parameters. In the fine-tuned MobileNet CNN model, top layers are frozen and few layers are replaced with other layers such as a depthwise layer, pointwise layer, ReLu and Batch normalization layer, global average pooling layer. The fully connected layer is removed. The fine-tuned MobileNet CNN model performs quite well with higher accuracy of classification of fruit at less computation cost. The proposed CNN Model performs classification and labels them as Blueberry, Huckleberry, Mulberry, Rasberry, strawberry, strawberry wedge, Cherry Brown, Cherry Red, Cherry Rainier, Cherry wax Black, Cherry wax Red, Cherry wax Yellow. The proposed model’s average validation accuracy is about 98.60% and the loss rate is about 0.38%. The fruit images are acquired from the cultivation field include fruits that are occluded by foliage, under the shadow and some degree of overlap of strawberry, cherry flowers.

Highlights

  • In recent years, farmers in India eventually lost yield in the field due to incessant rain or intermittent rain, or relentless plant disease

  • The fine-tuned MobileNet Convolutional Neural Networks (CNN) Model is compared with VGGNet16 and GoogleNet

  • The cultivator, fruit-trader and the consumer can distinguish strawberry and cherry fruits according to its physical appearance if the number of strawberry and cherry fruit types are one or two

Read more

Summary

Introduction

Farmers in India eventually lost yield in the field due to incessant rain or intermittent rain, or relentless plant disease. Accurate analysis of disease and recommend treatment will assist the farmer to get maximum yield (Bock et al, 2010). To identify the plant disease, there various methods/techniques are adopted. Various spectroscopic and imaging and image processing methods have been used extensively to categorize fruits and plant epidemics. With the accessibility of high definition smart modern cameras, accurate and automatic plant disease detection methods based on machine learning algorithms are proposed in the paper (Liakos et al, 2018). Machine learning methods are appropriate for the recognition of consistent, clear plant images; it requires complex image pre-processing and feature extraction methods. In the most recent year, Convolutional Neural Networks (CNN) and Deep learning algorithms have made a prodigious breakthrough in recognizing and classification patterns, object identification, visual localization and segmentation

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call