OS: Ubuntu 18.04, Tensorflow model:ssd_mobilenet_v2_quantized_300x300_coco_2019_01_03
I have retrained the ssd_mobilenet_v1_quantized_coco model using my own data. I have successfully generated the frozen_inference_graph.pb, using the script, "export_inference_graph.py." But when I ran the script, "tflite_convert.py," the error, "ValueError: Invalid tensors 'normalized_input_image_tensor' were found." broke out. The parameters of the script, "tflite_convert.py" is
python tflite_convert.py \
--output_file="converted_quant_traffic_tflite/traffic_tflite_graph.tflite" \
--graph_def_file="traffic_inference_graph_lite/frozen_inference_graph.pb" \
--input_arrays='normalized_input_image_tensor' \
--inference_type=QUANTIZED_UINT8 \
--output_arrays='TFLite_Detection_PostProcess','TFLite_Detection_PostProcess:1','TFLite_Detection_PostProcess:2','TFLite_Detection_PostProcess:3' \
--mean_values=128 \
--std_dev_values=128 \
--input_shapes=1,300,300,3 \
--default_ranges_min=0 \
--default_ranges_max=6 \
--change_concat_input_ranges=false \
--allow_nudging_weights_to_use_fast_gemm_kernel=true \
--allow_custom_ops
Obviously, the input_arrays was not set correctly. Please advise me how to set the input_arrays.
export_tflite_ssd_graph.py
file, instead ofexport_inference_graph.py
? They are in the same directory and as I remember this one should be used for furthertflite
conversion.export_inference
uses some operations that are not supported. But that's just my guess.