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Measuring the Ripeness of Fruit with Hyperspectral Imaging and Deep Learning

About

We present a system to measure the ripeness of fruit with a hyperspectral camera and a suitable deep neural network architecture. This architecture did outperform competitive baseline models on the prediction of the ripeness state of fruit. For this, we recorded a data set of ripening avocados and kiwis, which we make public. We also describe the process of data collection in a manner that the adaption for other fruit is easy. The trained network is validated empirically, and we investigate the trained features. Furthermore, a technique is introduced to visualize the ripening process.

Leon Amadeus Varga, Jan Makowski, Andreas Zell• 2021

Related benchmarks

TaskDatasetResultRank
Hyperspectral Image ClassificationKSC (test)
Average Accuracy95.3
32
Hyperspectral Image ClassificationHSI-Benchmark (test)
HRSS Accuracy98.33
24
Firmness PredictionAvocado INNO-SPEC Redeye (test)
Accuracy88.9
11
Firmness PredictionAvocado Specim FX 10 (test)
Accuracy93.3
11
Firmness PredictionKiwi Specim FX 10 (test)
Accuracy69.57
11
Ripeness PredictionAvocado Specim FX 10 (test)
Accuracy93.3
11
Ripeness PredictionKiwi INNO-SPEC Redeye (test)
Accuracy77.8
11
Ripeness PredictionKiwi Specim FX 10 (test)
Accuracy66.7
11
Ripeness PredictionAvocado INNO-SPEC Redeye (test)
Accuracy88.9
11
Sweetness PredictionKiwi INNO-SPEC Redeye (test)
Accuracy66.7
11
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