Producing tomato is a daunting task as the crop of tomato is exposed to attacks from various microorganisms. The symptoms of the attacks are usually changed in color, bacterial spots, special kind of specks, and sunken areas with concentric rings having different colors on the tomato outer surface. This paper addresses a vision sensing based system for tomato quality inspection. A novel approach has been developed for tomato fruit detection and disease detection. Developed system consists of USB based camera module having 12.0 megapixel interfaced with ARM-9 processor. Zigbee module has been interfaced with developed system for wireless transmission from host system to PC based server for further processing. Algorithm development consists of three major steps, preprocessing steps like noise rejection, segmentation and scaling, classification and recognition, and automatic disease detection and classification. Tomato samples have been collected from local market and data acquisition has been performed for data base preparation and various processing steps. Developed system can detect as well as classify the various diseases in tomato samples. Various pattern recognition and soft computing techniques have been implemented for data analysis as well as different parameters prediction like shelf life of the tomato, quality index based on disease detection and classification, freshness detection, maturity index detection, and different suggestions for detected diseases. Results are validated with aroma sensing technique using commercial Alpha Mos 3000 system. Accuracy has been calculated from extracted results, which is around 92%.
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机译:生产番茄是一种艰巨的任务,因为番茄的作物暴露于各种微生物的攻击。攻击的症状通常在颜色,细菌斑点,特殊种类和凹陷区域中改变,具有在番茄外表面上具有不同颜色的同心环。本文解决了番茄质量检验的视觉传感系统。为番茄果实检测和疾病检测开发了一种新的方法。开发系统由基于USB的相机模块组成,具有12.0万像素与ARM-9处理器接口。 ZigBee模块已与开发系统接口,用于从主机系统到基于PC的服务器的无线传输,以进行进一步处理。算法开发包括三个主要步骤,预处理步骤,如噪声抑制,分割和扩展,分类和识别以及自动疾病检测和分类。已经从当地市场收集了番茄样本,并针对数据库准备和各种处理步骤进行了数据采集。开发系统可以检测以及分类番茄样本中的各种疾病。已经实施了各种模式识别和软计算技术,用于数据分析以及番茄的保质期等不同的参数预测,基于疾病检测和分类,新鲜度检测,成熟度指数检测以及检测到疾病的不同建议。使用商业alpha MOS 3000系统的香气传感技术验证了结果。精度从提取的结果计算,这约为92%。
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